Human-Centric Cognitive State Recognition Using Physiological Signals: A Systematic Review of Machine Learning Strategies Across Application Domains
Abstract
1. Introduction
1.1. Motivation
1.2. Contribution
- Comparative evaluation: presenting a comparative analysis of shallow ML versus DL techniques, and neuroimaging versus other physiological modalities, in the realm of cognitive state recognition. It offers valuable insights into the respective strengths and limitations of each approach, thereby informing future research directions and practical applications within the field.
- Practical application insights: revealing real-world applications of cognitive state recognition, illustrating its significant impact and potential across various industries such as healthcare, education, automotive, and workplace productivity. Furthermore, the findings provide valuable information and inspiration for future research and development, enhancing the practical utility of cognitive state recognition in multidisciplinary settings.
- In-depth analysis of Machine Learning strategies: providing a thorough examination of shallow ML approaches coupled with feature engineering and DL techniques used in cognitive state recognition, highlighting their strengths and limitations. Additionally, the review evaluates how ML techniques have progressed over time, highlighting key advancements, shifts in methodologies, and emerging trends in the context of cognitive state recognition.
- Integration of Physiological Signals: this investigation delves into the effective interpretation of physiological signals by DL algorithms for the accurate identification and analysis of various cognitive conditions. It categorises this process based on data preprocessing, modality fusion, and the selection of appropriate DL models, providing a comprehensive understanding of how these elements work in tandem to enhance cognitive state recognition.
2. Scope and Methodology of Systematic Literature Review
2.1. Scope Definition
- Q1: What types of ML strategies have been used to classify or predict cognitive states using physiological signals?
- Q2: How has the application of ML in cognitive state recognition evolved, and what are the latest developments in this area?
- Q3: How do different ML strategies, particularly shallow ML versus DL, perform in cognitive state recognition using physiological signals?
- Q4: What types of physiological signals have been used in conjunction with ML to assess cognitive states?
- Q5: What are the strengths and limitations of using neuroimaging modalities versus other physiological modalities in cognitive state recognition?
- Q6: What are the practical applications of cognitive state recognition in fields such as the study investigating the effects of cognitive load-inducing tasks, healthcare, the automotive industry, and workplace productivity?
- Q7: What are the future prospects and potential areas for further research in the development of ML strategies for cognitive state recognition?
2.2. Search Strategy and Study Selection
- AI-related terms: “AI” OR “artificial intelligence” OR “deep learning” OR “machine learning” OR “neural network” OR “NN” OR “convolutional neural network” OR “CNN” OR “ConvNet” OR “long short term memory” OR “long short-term memory” OR “LSTM”.
- Cognitive state-related terms: “cognitive workload” OR “mental workload” OR “stress level” OR “working memory” OR “cognitive overload” OR “resourcefulness”.
- Physiological signal-related terms: “ECG” OR “electrocardiogram” OR “EMG” OR “electromyography” OR “PPG” OR “photoplethysmography” OR “pupil” OR “pupil metric” OR “pupil dilation” OR “blink” OR “eye tracking” OR “GSR” OR “galvanic skin response” OR “fNIRS” OR “functional near-infrared spectroscopy” OR “EEG” OR “electroencephalogram” OR “physiological signal” OR “video” OR “EDA” OR “electrodermal activity” OR “autonomic nervous system".
Inclusion and Exclusion Criteria
- Publication date: articles published from 2010 to early 2024.
- Topic relevance: studies focusing on cognitive state recognition using physiological signals and ML strategies. This includes research on cognitive workload (CWL), stress levels, and working memory changes, which are integral aspects of cognitive state assessment and are closely linked to task performance in practical applications. This targeted selection was made to ensure that the review remained focused on real-world CWL evaluation rather than attempting to cover every conceivable cognitive state. Thus, the review excludes studies that address solely mental states—such as emotional changes, imaginative thinking, mind-wandering, and other similar phenomena. Similarly, the review excludes studies that are centred on cognitive training or enhancement methods, such as transcranial direct current stimulation (tDCS) or photobiomodulation (PBM).
- Physiological signal requirement: physiological signals are measurable biological responses generated by the human body that reflect activity within the autonomic or central nervous systems, such as cardiac activity (e.g., ECG), neural activity (e.g., EEG), muscle activation (e.g., EMG), or electrodermal responses (e.g., EDA). The signals selected for inclusion in this review represent well-established, objectively quantifiable physiological indicators closely associated with cognitive workload. While other measures, including facial expressions, speech patterns, breathing patterns, and haptics, may also provide insights into cognitive states, they primarily represent behavioural or mixed-modality indicators, and therefore fall outside the specific definition of physiological signals used here. Thus, the studies included in this review were required to utilise at least one physiological signal as a primary data source, with video- or image-based data permitted only as supplementary modalities.
- Machine learning/deep learning utilisation: research involving any type of ML or DL approach.
- Implementation in practical scenarios: studies must apply cognitive state recognition in practical applications, such as in cognitive load-inducing tasks, healthcare, automotive experiments, workplace productivity, or any other relevant domain.
2.3. Data Extraction
2.4. Synthesis Approach
3. A Review of Two Principal Methodologies Employed in Cognitive State Recognition: Shallow Machine Learning Approaches Coupled with Feature Engineering and Deep Learning
Development and Evolution of Machine Learning Approaches in Cognitive State Recognition
- Early stage (2010–2015): during the initial years, from 2010 to 2015, shallow ML was the sole approach used in cognitive state recognition, playing the predominant role. This is mostly due to its simplicity and effectiveness for the smaller or structured datasets commonly available at that time. The trend shows a gradual increase in publications, peaking at 11 in 2015. This period emphasises the reliance on domain expertise for handcrafted feature extraction and the application of algorithms that provide a clear understanding of the model’s decision-making process.
- Emergence of DL (2016–2017): the landscape began to change in 2016 with the emergence of DL in the literature, marking the beginning of a new era in cognitive state recognition. This period of transition witnesses a slow but steady increase in DL publications, suggesting a growing acknowledgement of its potential to manage larger and more complex datasets without the need for manual feature engineering.
- Rapid growth of DL (2018–2023): rapid growth in DL-based cognitive state recognition approaches was observed between 2018 and 2023, with the number of publications increasing from 7 to 67 in 2023. This rapid expansion can be attributed to advancements in computational power, the availability of large datasets, and improvements in neural network architectures, which collectively make DL more accessible and applicable to a broader range of cognitive state recognition problems. Indeed, cross-disciplinary research has increasingly benefited from the capabilities of DL techniques, especially under collaborative frameworks that span multiple disciplines. One of DL’s key advantages is that it does not require advanced knowledge in feature engineering, which reduces the barrier of interdisciplinary collaborations in many specialised fields.
- Sustained presence and subsequent plateauing of ML (2018–2023): while DL continues its rapid expansion, shallow ML-based approaches maintain a significant presence, evidenced by a promising development from 2018 to 2022, culminating in a peak of 48 publications in 2022. However, a slight decrease in 2023 indicates a plateau in research activities, which may be suggesting that the field encounters the limitations of shallow learning approaches as DL becomes the dominant modality.
- Current trends (2023): in 2023, the data reveals a significant trend as publications on DL (67) outnumber those on shallow ML (46). This signifies a shift in the field of cognitive state recognition, with a growing preference for the multidimensional learning abilities offered by DL models. Furthermore, this takeover reflects a shift in research focus, moving from pursuing more sophisticated feature engineering within ML approaches to the adoption of DL’s capacity for handling larger datasets and a broader spectrum of modalities. This shift is facilitating the evolution of cognitive state recognition toward methodologies that are capable of capturing subtle changes in human cognition across a range of interdisciplinary applications.
4. Role of Neuroimaging Signals in Assessing Cognitive States
- Solely EEG in cognitive state recognition: EEG is highly effective in cognitive state recognition due to its ability to capture rapid, millisecond-level fluctuations in brain activity. This high temporal resolution is essential for analysing dynamic cognitive processes such as attention shifts, mental workload, and emotional responses. EEG signals are typically analysed through features like power spectral density, coherence, and event-related potentials (ERPs) [51]. These features provide insights into various frequency bands (alpha, beta, gamma, delta, theta) associated with different cognitive states. ML and DL techniques, such as SVMs and CNNs, are employed to classify these states based on EEG features. However, EEG’s susceptibility to artefacts and its limited spatial resolution, which restricts the ability to pinpoint the exact location of brain activity, poses challenges in data interpretation.
- Solely fNIRS in cognitive state recognition: the fNIRS signal provides a window into cerebral blood flow and oxygenation, correlating with neural activity during cognitive tasks. It offers spatial insights into brain function, particularly in areas like working memory and executive functions. In fNIRS, the concentration changes of oxygenated and deoxygenated haemoglobin are key features used in cognitive state analysis. The application of ML and DL to fNIRS data has opened new avenues for cognitive state classification. Despite its advantages, including lower susceptibility to electrical artifacts compared to EEG, fNIRS faces challenges like lower temporal resolution and sensitivity to extracerebral factors.
- Combining EEG and fNIRS: the integration of EEG and fNIRS data marks a significant advancement in cognitive state recognition, merging EEG’s temporal accuracy with fNIRS’s spatial resolution. This multimodal approach allows for a comprehensive analysis, where EEG’s sensitivity to rapid cognitive shifts complements fNIRS’s ability to localise brain activity during sustained tasks. Developing multimodal ML/DL models that effectively combine features from both EEG and fNIRS is at the forefront of current research. This synergy enhances the accuracy in identifying complex cognitive states, although it introduces challenges in data synchronisation, integration, and increased computational demands. A comparative summary of these three neuroimaging modalities, including their advantages, limitations, and application contexts in cognitive state recognition, is provided in Table 2.
Modality | Number of Studies | Pros | Cons | Case Studies and Methodological Considerations |
---|---|---|---|---|
EEG [13,24,25,26,27,28,30,31,32,52,53,54,55,56,57,58,59,60,61,62,63,64,65,66,67,68,69,70,71,72,73,74,75,76,77,78,79,80,81,82,83,84,85,86,87,88,89,90,91,92,93,94,95,96,97,98,99,100,101,102,103,104,105,106,107,108,109,110,111,112,113,114,115,116,117,118,119,120,121,122,123,124,125,126,127,128,129,130,131,132,133,134,135,136,137,138,139,140,141,142,143,144,145,146,147,148,149,150,151,152,153,154,155,156,157,158,159,160,161,162,163,164,165,166,167,168,169,170,171,172,173,174,175,176,177,178,179,180,181,182,183,184,185,186,187,188,189,190,191,192,193,194,195,196,197,198,199,200,201,202,203,204,205,206,207,208,209,210,211,212,213,214,215,216,217,218,219,220,221,222,223,224,225] | 184 Period: 2010–2023 |
|
| The popularity of EEG (184 studies) underscores its utility in capturing fast-changing brain dynamics, despite spatial resolution and noise challenges. |
fNIRS [29,226,227,228,229,230,231,232,233,234,235,236,237,238,239,240,241,242,243,244,245] | 21 Period: 2017–2023 |
|
| The lower number of fNIRS studies (21) reflects its limitations in temporal resolution, but its spatial accuracy provides valuable insights into brain function. |
EEG & fNIRS [33,34,35,246,247,248,249,250,251,252,253,254,255] | 13 Period: 2017–2023 |
|
| The combination approach, used in 13 studies, is less common due to integration complexities but offers a promising comprehensive view of cognitive states. |
Emerging Trends in Modalities for Cognitive State Recognition
- Initial stage (2010–2015): during the initial stage, from 2010 to 2014, research was primarily focused on neuroimaging modalities alone, specifically using EEG. This period marked the advent of utilising direct brain activity measurements to interpret cognitive states. Techniques like Fourier transform were commonly employed for feature extraction in the frequency domain, laying the groundwork for the application of shallow ML algorithms in the analysis and interpretation of these signals [136,172]. In 2011, cognitive state recognition research began to diversify with the emergence of studies incorporating other single or combined physiological modalities such as ECG, EMG, and GSR. These signals were processed similarly to neuroimaging modalities, utilising shallow ML on hand-crafted features [256,257,258]. This trend suggested an exploratory phase, indicating early exploration in the adoption of multimodal approaches.
- Growth and diversification (2016–2023): during this stage, both approaches exhibit a steady increase in studies. This consistent growth indicates a growing interest in diversifying cognitive state recognition methodologies. As the field progressed from 2016 onwards, there was a marked increase in the adoption of the other single/combined physiological modality approach, which began to gain significant traction by 2017, evidenced by a swift escalation in publication numbers. In 2022, publications focusing on physiological modality approaches outnumbered those dedicated solely to neuroimaging modalities, signalling a shift in research direction within the field. However, in 2023, the neuroimaging-modality-only approach regained its lead in the number of publications. In 2023, 40 out of 63 studies focusing solely on neuroimaging modalities utilised DL, nearly doubling the count from 2022, where only 21 out of 55 studies employed DL techniques. Similarly, in 2023, 27 out of 50 studies involving physiological modalities utilised DL, a significant increase from 2022, where only 9 out of 43 studies employed DL techniques. Both demonstrate an increasing trend towards using DL to interpret data from different modalities, highlighting DL’s growing importance in cognitive state recognition research.
- Current trend (2023): to summarise, the comparative trend analysis from 2015 to 2023 underscores a significant shift from primarily using solely neuroimaging modalities with shallow ML to adopting multimodal physiological modalities enhanced by DL.
5. Revealing Real-World Applications of Cognitive State Recognition
5.1. Multimodal Physiological Modalities and Deep Learning in Cognitive State Recognition Across Real-World Applications
5.1.1. Cognitive Load-Inducing Task
Authors | Practical Application | Practical Task | Classification Goal & Classes | Key Features & Modalities | Deep Learning Approach | Classification Performance |
---|---|---|---|---|---|---|
Dolmans et al. (2020) [36] | Mental workload classification in brain–computer interface | Solving verbal logic puzzles | Classification of perceived mental workload into seven levels | fNIRS, GSR, PPG, and eye-tracking | Intermediate fusion multimodal DNN | Seven-class: 98.5% accuracy |
Mozafari et al. (2020) [269] | Stress detection in IoT settings | Mental Arousal Level Recognition Competition database | Five cognitive stress levels (one rest and four stress levels) | GSR, PPG, and RESP | Shallow ML and CNN with PCA | CNN has then lowest accuracy compared to SLR, SVM, and LDA |
Hu et al. (2021) [270] | Mental fatigue monitoring | Modified N-back task | Real-time estimation of mental fatigue levels | ECG, RESP, and pupil diameter | LSTM network | Average RMSE of 0.13, Pearson’s R of 0.70 under 20-fold cross-validation |
Rashid et al. (2021) [271] | Stress recognition for wristwatches | WESAD dataset | Three-class and two-class classification (stress levels) | Blood volume pulse (BVP) collected from wrist-based PPG | Hybrid CNN (H-CNN) | 3-class: 75.21% accuracy and macro F1 64.15%; 2-class: 88.56% accuracy and macro F1 86.18% under LOSO calidation |
Youngjun Cho (2021) [263] | Mental workload assessment | Mental arithmetic task | Assessing task difficulty into two levels | Spontaneous eye-blink time-series via RGB camera | Multi-dimensional LSTM network | Over 70% mean accuracies in all labelling strategies |
Ghosh et al. (2022) [4] | Stress detection from physiological sensors | WESAD dataset | Stress classification into three levels | ACC, ECG, TEMP, RESP, EDA, and EMG | CNN with Gramian Angular Field image encoding | Three-class: 94.77% accuracy, 0.95 precision, 0.95 recall, and 0.95 F1 score |
Tanwar et al. (2022) [272] | Stress detection from physiological sensors | WESAD dataset | Three-class stress classification (baseline, stress, amusement) | ECG, EMG, TEMP, EDA, and RESP | CNN-LSTM | Three-class: 90.20% accuracy |
Seo et al. (2022) [273] | Work-related stress detection | Stroop task | Two-level and three-level stress classification | ECG, RESP, and facial features | Deep neural network with feature-level and decision-level fusion | Two-level: 73.3% accuracy, AUC of 0.822, F1 score of 0.700; three-level: 54.4% accuracy, AUC of 0.727, F1 score of 0.508 |
Shermadurai et al. (2023) [274] | Stress classification from physiological sensors | DEAP and WESAD datasets | Three-class stress classification (low, medium, high stress) | EEG and acceleration (ACC) | CNN (as feature extraction mechanism) with data fusion | Three-class: 82.85% |
Mirzaeian et al. (2023) [275] | Cognitive workload estimation | Arithmetic task with different workload levels | Discrimination of three workload levels | EDA using smooth pseudo-Wigner–Ville distribution (SPWVD) and gray-level co-occurrence matrix (GLCM) | Cascade-forward neural network (CFNN), RNN | Three-level: 97.71% average accuracy |
Kuttala et al. (2023) [276] | Stress detection using physiological signals | N-back task (MAUS dataset) | Binary classification of stress level | EDA and ECG | Hierarchical CNN with multimodal feature fusion using multimodal transfer module (MMTM) | Two-class classification achieved 88.7% accuracy, 0.88 F1 score, and 0.87 AUC. |
Lange et al. (2023) [265] | Privacy-preserving stress detection | WESAD dataset | Binary stress detection (stress vs. non-stress) | BVP, EDA, TEMP, and ACC | Time-series classification transformer (TSCT) with differential privacy (DP) | Accuracy: 91.89% (non-private baseline), 78.16% ( = 1), F1-score: 91.61% (non-private baseline), 71.26% ( = 1) |
Zhang et al. (2023) [277] | Cognitive load recognition | Arithmetic computation tasks | Binary classification of cognitive load levels (relaxed vs. intense) | Finger-clip PPG sensor data | LSTM model | 92.3% binary classification accuracy |
Sarker Bipro et al. (2023) [278] | Mental stress detection | N-back tasks in Mental Arithmetic Stress Dataset (MAUS) | Binary classification of stress levels | ECG | CNN-LSTM model | Accuracy: 75%, sensitivity: 70.37%, specificity: 84.62%, precision: 90.48%, F1-score: 79.17% |
Guo et al. (2023) [279] | Mental stress detection | Mental arithmetic tests | Four-class mental stress classification (rest, low, medium, high) | R-R interval, GSR, and RESP | CNN-based models | Identification accuracy varies with stress levels |
Singh et al. (2023) [280] | Stress classification from physiological sensors | WESAD dataset | Three-class stress classification | EDA, ECG, RESP, EMG, and TEMP | Hybrid CNN-LSTM model | 90.45% accuracy, F1-score 90.28% |
Melvillo et al. (2023) [281] | Stress detection using ECG signals | WESAD dataset | Binary classification of stress states | ECG | Combined CNN and LSTM model | Achieved highest accuracy of 97.07% using HRV data in both time and frequency domains |
Chen et al. (2023) [282] | Stress analysis in university students | University students playing Sudoku under different conditions | Stress level classification under three scenarios (relaxed, medium, high stress) | ECG, PPG, and EEG | Enhanced models like LRCN and self-supervised CNN | High accuracy in all scenarios, with up to 98.78% accuracy and F1-scores up to 96.67% |
Saleh et al. (2023) [37] | Mental workload recognition | N-back task with three difficulty levels | Classification of increasing, stable, or decreasing mental workload | EEG, EDA, PPG, and eye-tracking | CNN with novel merging layer | Superior accuracy compared to classical CNN, BiLSTM, and transformer networks across multiple data modalities |
Feng et al. (2023) [20] | Affect and stress detection | WESAD dataset | Binary classification of street level (stress vs. non-stress) | ECG, EMG, EDA, TEMP, and ACC | Feature-level fusion of LSTM and 1DCNN for spatial and temporal feature extraction | Accuracy: 94.9%, F1-score: 94.98% |
Benouis et al. (2023) [267] | Privacy-preserving stress recognition | WESAD dataset | Binary classification of street level (stress vs. non-stress) | PPG, EDA, and ACC | Multi-task learning combining federated learning and differential privacy | Achieved accuracy of 90%, identity re-identification limited to 47% |
Soni et al. (2023) [266] | Stress detection | WESAD dataset | Binary classification of street level (amused vs. stressed) | ECG, EDA, TEMP, and ACC | Multi-layered DL approach using AutoEncoders, LSTM, and transformers | Achieved a stress detection rate of 98% |
P. Mukherjee and A. Halder Roy (2023) [264] | Stress recognition | Solving mathematical problems of varying complexity | Classification of four stress levels (no stress, low stress, medium stress, high stress) | EEG and PPG | Attention mechanism-based CNN-LSTM model | Average accuracy of 97.86% |
Fenoglio et al. (2023) [268] | Privacy-aware cognitive workload estimation | Four distinct activities (COLET dataset) | Two-level cognitive workload (low, high) | Eye-tracking | Federated learning (FL), CNN | Average accuracy on LOSO validation: 95.40% |
5.1.2. Conventional Driving
Authors | Practical Application | Practical Task | Classification Goal and Classes | Key Features and Modalities | Deep Learning Approach | Classification Performance |
---|---|---|---|---|---|---|
Wang et al. (2018) [288] | Automotive safety | Simulated driving | Cognitive workload demand assessment (low, high) | Eye-gaze patterns | m-HyperLSTM | Precision: 83.9%, recall: 87.8% |
Aghajarian et al. (2019) [289] | Automotive safety | Simulated driving | Hazardous driver states (multiple classes: drowsiness, high traffic, adverse weather, cell phone usage) | ECG, RESP, TEMP, GSR, and vehicle kinematics | PCA and ANNs | Accuracy: 75.9% (cell phone usage), 82.7% (alert vs. drowsy), 81.5% (highway vs. town), 71.1% (snowy vs. clear) |
Rastgoo et al. (2019) [11] | Driver stress detection | Simulated driving in a driving simulator | Driver stress levels (low, medium, high) | ECG, vehicle data, and environmental conditions | CNN-LSTM network | Average accuracy: 92.8%, sensitivity: 94.13%, specificity: 97.37%, precision: 95.00% |
Xie et al. (2019) [290] | Automotive | Real-world driving | Driver mental workload detection (two classes: low, high) | ECG, RESP, and skin TEMP | Modified U-Net with continuity-aware loss function | Accuracy: 80% |
Wang et al. (2019) [291] | Automotive | Real-world driving | Driving stress levels (low, high) | ECG and GSR | CNN | Accuracy: 92%, specificity: 92%, sensitivity: 93%, AUC: 98% (the average evaluating metrics on 10 drivers) |
Huang et al. (2020) [284] | Automotive safety | Simulated driving scenarios | Driver cognitive stress levels (low, normal, high) | ECG (converted into pictures) | CNN | Accuracy: 92.8% (28 interbeat intervals), 98.79% (40 interbeat intervals) |
Lingelbach et al. (2021) [292] | Drivers’ stress recognition | Simulated driving with cognitive tasks | Three cognitive stress levels (low, mid, high) | EDA | Conventional ML, AutoML, CNN | CNN was not superior in performance compared to the conventional and AutoML models with handcrafted features |
Bustos et al. (2021) [283] | Driver assistance technologies | Real-world driving | Stress levels (low, medium, high) | Road scene video data | CNN, TSN (Temporal Segment Networks) | Best accuracy of the TSN model: 0.72 |
Tzevelekakis et al. (2021) [293] | Driver’s cognitive load estimation | Real-world driving (DriveDB dataset) | Mental stress classification: two-class (stress vs. non-stress) and three-class (low, moderate, high) | ECG | VGG-inspired model and 1D-CNN model | Accuracy: 98.3% for two-class classification (VGG-inspired model), 85.1% for three-class classification (1D-CNN model) |
He et al. (2022) [294] | Driver’s cognitive load estimation | Simulated driving with an auditory–verbal n-back task | Three-level of driver’s cognitive load (no external load, one-back task, two-back task) | Eye-tracking, ECG, and GSR | Conventional ML models and RNN model | Best accuracy of 97.8% achieved by RF model, where the RNN model achieved 95.6% |
Mohd Isam et al. (2022) [285] | Drivers’ stress recognition | Real-world driving | Three-level of driver’s stress (low, medium, high) | EMG (converted into 2D spectrogram) | Pre-trained CNNs (SqueezeNet, GoogLeNet, ResNet50) | Best validation accuracy of 66.67% achieved by GoogLeNet-based model |
Amin et al. (2022) [286] | Drivers’ stress detection | Real-world driving | Three-level of driver’s stress (low, medium, high) | ECG (converted by Continuous Wavelet Transform) | Pre-trained CNN models (Xception, GoogLeNet, DarkNet-53, ResNet-101, InceptionResNetV2, DenseNet-201, InceptionV3) | Best overall validation accuracy of 98.11% achieved by Xception-based model |
Huang et al. (2022) [295] | Recognition of drivers’ mental workload | Simulated driving with a secondary task of various difficulties | Four-class of driver’s mental workload (rest, normal, high, very high) | EEG, ECG, EDA, and RESP | CNN- and LSTM-based models | Highest accuracy with CNN-LSTM: 97.8% |
Aygun et al. (2022) [296] | Recognition of drivers’ cognitive workload | Simulated driving with various secondary tasks | Three binary classifications derived from three cognitive workload levels | Pupillometry, EEG, HRV, and BPV | MLP, LSTM | A comprehensive evaluation were conducted on ML models and sensing modalities |
Wei et al. (2023) [297] | Forecasting the driver’s mental workload | Real-world driving | Three-level of driver’s mental workload (low, medium, high) | ECG and EDA | LTS-MPF (transformer-based model) | Classification accuracy: 94.3%, future workload prediction (1 s) accuracy: 93.5% |
Zontone et al. (2023) [287] | Drivers’ stress detection | Simulated and real-world driving | Two-level of driver’s stress | EDA and ECG (both converted into scalogram) | CNN | Simulated driving: 91.78% accuracy, real driving: 99.24% accuracy |
Shajari et al. (2023) [298] | Detection of driver’s cognitive distraction | Simulated driving with cognitive tasks | Cognitive distraction (distracted, not distracted) | Eye-tracking, head movement data, and driving performance measures | Deep feedforward neural network (D-FFNN) | Accuracy: 96.09%, precision: 95.7%, recall: 95.56%, F1-score: 95.63% |
Aminosharieh Najafi et al. (2023) [299] | Drivers’ mental engagement analysis | Simulated driving with manual and autonomous scenarios | Mental engagement (high, low) | EEG, EDA, and ECG | Deep CNN with data-/feature-level fusion methods | Average accuracy on LOSO validation: 82.0% |
Fenoglio et al. (2023) [268] | Privacy-aware cognitive workload estimation | Semi-autonomous driving simulation experiment with n-back test (ADABase dataset) | Two-level of driver’s cognitive workload (low, high) | Eye-tracking, ECG, EMG, and EDA | Federated learning (FL), CNN | Average accuracy on LOSO validation: 85.58% |
Amadori et al. (2023) [300] | Automotive | Simulated virtual reality driving with secondary tasks | Four-class of driver’s cognitive workload | Eye-tracking, head pose, ECG, and EDA | WorkNet ( an end-to-end sequential network based on HyperLSTMs) | F1-score: 90% |
5.1.3. Aviation-Related Task
Authors | Practical Application | Practical Task | Classification Goal and Classes | Key Features and Modalities | Deep Learning Approach | Classification Performance |
---|---|---|---|---|---|---|
Wang et al. (2020) [302] | Pilot workload evaluation | Simulated airfield traffic pattern flights | Cognitive load levels: low, medium, high | ECG | LSTM-RNN hybrid model | Accuracy 77.6% |
Meneses et al. (2021) [303] | Pilot stress monitoring system | Simulated stress-inducing tasks | Stress detection (stressed vs. non-stressed) | PPG, EDA, TEMP, and ACC | Deep convolutional neural network (DCNN) | Binary classification accuracy: 98% This DCNN model has also been validated on other datasets. Accuracy: 99% (WESAD), 90% (NASA-TLX calibration), 87% (ELWEV) |
Zhang et al. (2023) [304] | Pilot workload evaluation | Simulated flight tasks | Classification of three levels of pilot workload | Eye-tracking and performance data | Multi-population genetic backpropagation neural networks | Faster convergence and lower prediction error than genetic backpropagation neural networks |
Moore et al. (2023) [19] | Pilot cognitive load monitoring | Simulated flight tasks | Classification of pilot task difficulty (four levels) | Eye-tracking and EDA | DNN with MINIROCKET for feature reduction | AUC: 0.912; equal error rate: 0.181 |
Li et al. (2023) [301] | Pilot stress monitoring | Flight simulation maneuvers | Stress level classification (two, three, and four classes) | ECG, EMG, EDA, RESP, and TEMP | Transformer with CNN | Accuracy: 93.28% (two-class), 88.75% (three-class), 84.85% (four-class) |
Xiong et al. (2023) [305] | Air traffic control | Simulated air traffic control tasks | Prediction of separation errors (binary: error/no error) | Head pose, eyelid movement, facial expression, ECG, and task performance measures | Encoder–decoder LSTM network | Precision, recall, F1-score, alignment accuracy, sequence similarity |
5.1.4. Medical Task
5.1.5. Virtual Reality
5.1.6. Working Environment
5.2. Advancements in Multimodal Physiological Data and Deep Learning for Real-World Cognitive State Recognition
Authors | Practical Application | Practical Task | Classification Goal and Classes | Key Features and Modalities | Deep Learning Approach | Classification Performance |
---|---|---|---|---|---|---|
Sharma et al. (2021) [306] | Cognitive workload assessment in clinical ultrasound imaging | Fetal ultrasound examinations | Cognitive workload classification | Pupil diameter changes | 1D-CNN, 2D-CNN (ResNet18) | ROC AUC: 0.98 (task), 0.80 (experience) |
Jin et al. (2022) [9] | Cognitive workload assessment in surgical settings | Laparoscopic peg transfer in four distinct conditions | Cognitive workload (binary and four-class) | EEG, fNIRS, and pupil diameter | Multimodal DL with transfer learning (AlexNet) and CNNs | Accuracy: 100% (binary), 93% (four-class) |
Authors | Practical Application | Practical Task | Classification Goal and Classes | Key Features and Modalities | Deep Learning Approach | Classification Performance |
---|---|---|---|---|---|---|
Amadori et al. (2020) [307] | Simulated driving setups using VR | Simulated driving while performing N-back task | Cognitive overload detection; binary classification of decision correctness | Eye-gaze and head-pose data | LSTM-based model (DecNet) | Cognitive overload can be detected 2 s before it occurs in both auditory stimuli (81% precision, 77% recall) and visual stimuli (67% precision, 65% recall) |
Ahmad et al. (2023) [308] | Stress assessment in VR applications | VR rollercoaster simulation | Stress level classification into low, medium, high (three classes) | ECG | Multimodal deep fusion model (CNN based) | Outperformed classical models and baseline DL models, showing a 9% increase in accuracy over HRV-based ML models and a 2.5% increase over baseline DL models |
Authors | Practical Application | Practical Task | Classification Goal and Classes | Key Features and Modalities | Deep Learning Approach | Classification Performance |
---|---|---|---|---|---|---|
Donati et al. (2023) [309] | Worker stress detection in manufacturing sectors | Workers producing in factory | Binary classification of stress conditions (stress vs. not stress) | ECG | 1D-CNN | Accuracy: 88.4%, F1-score: 0.90 |
6. Conclusions
6.1. Limitations of the Review Process
6.2. Implications for Future Research and Applications
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Aspect | Shallow ML | DL |
---|---|---|
Feature engineering | Requires extensive feature engineering. Features must be manually extracted and selected. | Minimal or no feature engineering required. Can automatically learn features from raw data. |
Data handling | Better suited for smaller, well-curatead datasets. | Excels with large datasets and can handle high-dimensional data. |
Model complexity | Relatively simple models. Easier to interpret and understand. | Complex models with multiple layers. Often considered a `black box’ due to their complexity. |
Computational resources | Generally requires less computational power and resources. | Requires significant computational resources for training and processing, especially with large data. |
Flexibility | Limited in handling raw data. Dependent on the quality of feature engineering. | Highly flexible in handling various types of raw data. |
Interpretability | High interpretability due to simpler models and reliance on handcrafted features. | Lower interpretability due to complex model structures and automatic feature extraction. |
Applications | Suitable for applications where interpretability is crucial and data is limited. | Ideal for applications with large datasets and where model complexity can capture intricate patterns. |
Temporal data handling | Less effective in capturing temporal dependencies in time-series data. | More effective in processing sequential and time-series data (e.g., using RNNs, LSTMs). |
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Jin, K.; Rubio-Solis, A.; Naik, R.; Leff, D.; Kinross, J.; Mylonas, G. Human-Centric Cognitive State Recognition Using Physiological Signals: A Systematic Review of Machine Learning Strategies Across Application Domains. Sensors 2025, 25, 4207. https://doi.org/10.3390/s25134207
Jin K, Rubio-Solis A, Naik R, Leff D, Kinross J, Mylonas G. Human-Centric Cognitive State Recognition Using Physiological Signals: A Systematic Review of Machine Learning Strategies Across Application Domains. Sensors. 2025; 25(13):4207. https://doi.org/10.3390/s25134207
Chicago/Turabian StyleJin, Kaizhe, Adrian Rubio-Solis, Ravi Naik, Daniel Leff, James Kinross, and George Mylonas. 2025. "Human-Centric Cognitive State Recognition Using Physiological Signals: A Systematic Review of Machine Learning Strategies Across Application Domains" Sensors 25, no. 13: 4207. https://doi.org/10.3390/s25134207
APA StyleJin, K., Rubio-Solis, A., Naik, R., Leff, D., Kinross, J., & Mylonas, G. (2025). Human-Centric Cognitive State Recognition Using Physiological Signals: A Systematic Review of Machine Learning Strategies Across Application Domains. Sensors, 25(13), 4207. https://doi.org/10.3390/s25134207