Research on a Task-Driven Classification and Evaluation Framework for Intelligent Massage Systems
Abstract
1. Introduction
2. Related Works
2.1. Current Status of Research on Vehicle Autonomous Driving Classification
2.2. Research Status of Intelligent Massage System
- Price gradient: Intelligence level is inferred based on product pricing. However, price does not have a linear correlation with functional capability, which can easily lead to misjudgment.
- Function stacking: Evaluation is conducted based on the number of massage programs, the variety of covered body regions, and the presence of additional modules (such as voice control, heating, or music). Nevertheless, this approach fails to reflect the structural nature of system intelligence.
- Subjective labels: Classification is based on marketing-oriented terms constructed from subjective expressions, such as “AI massage” or “automatic recognition”, which lack clear definitions and standardized criteria.
3. Materials and Methods
3.1. Definition of the Massage-Driven Task (MDT) Model
- 1.
- Perception stage (S1: Body State Recognition)
- 2.
- Decision stage (S2: Program Recommendation)
- 3.
- Execution stage (S3: Force and Rhythm Control; S4: Multi-Zone Coordination)
- 4.
- Feedback stage (S5: Abnormal Detection and Intervention; S6: User Modeling and Learning)
3.2. Design Logic of the Grading Structure
- Functional Delegation Structure (FDS): Measures the system’s autonomous task completion capability in the task execution dimension.
- Abnormal Perception Mechanism (APM): Evaluates the system’s ability to monitor and respond to operational anomalies.
- Human–Machine Interaction Bounds (HMIB): Reflects the system’s proactive service capability in the process of human–machine interaction.
- Task closed-loop capability: the degree to which the system autonomously undertakes each subtask in the MDT model (S1 to S6).
- Abnormal state handling capability: the system’s level of perception, judgment, and intervention in abnormal conditions during operation, reflecting its safety assurance capability.
- Interaction proactivity: the extent to which the system actively engages in user modeling, personalized learning, and service response.
3.2.1. Functional Delegation Structure (FDS)
- No Delegation (N): The system has no perception, judgment, or response capability in this task dimension, and all operations rely entirely on the user, representing a purely manual control stage.
- Limited Delegation (L): The system can perform part of the functions with the support of static rules or simple algorithms, such as executing programs based on fixed templates or adjusting feedback based on thresholds. However, in this state, the system lacks adaptability and closed-loop task capability and still requires user guidance or intervention.
- Full Delegation (F): The system possesses a complete capability chain from environmental perception and state judgment to action control and result feedback, enabling adaptive operation without user intervention and demonstrating strong task comprehension and system stability.
3.2.2. Abnormal Perception Mechanism (APM)
- No Perception: The system lacks any abnormal state monitoring functions. Unexpected conditions during operation cannot be detected, and all risk handling relies on the user to manually terminate the operation or restart the device, significantly compromising operational safety. (Corresponds to S5 “No Automation”)
- Rule-Based Perception: The system uses static threshold settings or predefined rule templates to identify and respond to certain typical abnormalities, for example, automatically reducing massage force when it exceeds a safety threshold or issuing a warning when a sensor fails. This mechanism has a single, fixed response path, lacks dynamic adaptability, and can only cover abnormal scenarios predefined in the rules. (Corresponds to S5 “Limited Automation”)
- Active Perception: The system integrates multi-source data (e.g., pressure, posture, time series) and builds dynamic behavior models, enabling it to predict, identify, and perform closed-loop regulation of irregular, complex, and evolving abnormalities. Typical capabilities include machine learning-based abnormal pattern recognition, dynamic strategy switching, process interruption control, and adaptive calibration, thereby establishing a fundamental safety assurance framework. (Corresponds to S5 “Full Automation”)
3.2.3. Human–Machine Interaction Bounds (HMIB)
- Fully Dependent Interaction: In subtasks such as S2 and S3, the system relies entirely on the user to issue start, adjustment, and termination commands. Interaction channels are primarily graphical user interfaces, voice commands, or mobile applications. The system lacks autonomous decision-making capabilities, resulting in a high operational workload for the user.
- Semi-Autonomous Interaction: In subtasks such as S1 and S2, the system can automatically execute certain processes based on predefined conditions (e.g., user posture, time markers). For example, it may automatically start a program upon detecting that the user is seated or transition to the next massage phase after completing a session. Although some processes run autonomously, critical points such as task switching and exception handling still require active user intervention.
- Passive–Aware Interaction: Based on its capabilities in subtasks S1 and S6, the system achieves continuous dynamic sensing and prediction of the user’s state. Without any explicit user commands, it can autonomously perform program recommendations, parameter adjustments, and process control. This mode, enabled by multimodal data fusion and behavioral modeling, significantly enhances task continuity, interaction immersion, and overall user experience.
3.3. Construction of the Grading Indicator System
3.3.1. Determination of Key Indicators
- 1.
- Task Recognition Accuracy (P1): Measures the system’s precision in identifying the user’s current physical state, corresponding to the classification performance of the S1 body state recognition module in FDS.
- 2.
- Abnormal Detection Sensitivity (P2): Evaluates the system’s capability to detect and respond to abnormal states in S5 (e.g., sensor failure, overload) in a timely manner, reflecting the coverage and emergency response capability of APM.
- 3.
- Recommendation Hit Rate (D1): Measures the degree to which program recommendations in S2 match the user’s actual needs, reflecting the decision-making accuracy of the FDS decision layer.
- 4.
- Decision Response Latency (D2): Refers to the average delay from perception input to decision output, measuring the real-time performance of the system in converting information and initiating execution in S2–S3 subtasks.
- 5.
- Force Control Error (E1): Calculated as the average deviation between the actual applied force and the target force curve, indicating the execution accuracy in force control and rhythm coordination in S3.
- 6.
- Path Tracking Accuracy (E2): Measures the spatial deviation between the actual trajectory of the massage head and the preset path, assessing the spatial accuracy of multi-region coordinated control in S4.
- 7.
- Physiological Feedback Response Rate (F1): Measures the proportion of user physiological signals (e.g., EDA, HRV) effectively activated during the massage process, reflecting the effectiveness of the feedback loop between S5 and S6, and representing the HMIB’s capability for dynamic user state perception.
- 8.
- User Subjective Satisfaction (F2): Reflects the user’s subjective evaluation of the overall massage experience, typically collected via questionnaires or interviews, and provides a comprehensive view of HMIB’s service quality and user experience optimization at the perceptual level.
3.3.2. Indicator Quantification Method
3.3.3. Questionnaire Design and Implementation
3.3.4. Data Analysis and Quantification
- (1)
- Expert scoring aggregation and normalization calculation
- (2)
- Construction of the judgment matrix and consistency verification
- (3)
- Perturbation Analysis and Weight Robustness Testing
- (4)
- Distribution of indicator weights and interpretation of system functions
3.3.5. Determination of the Grading Index System
4. Results
4.1. Intelligent Level Classification
4.1.1. Calculation of Three-Dimensional Ability Scores
4.1.2. Threshold Design and Grading
4.1.3. Comprehensive Intelligence Calculation
4.2. Definition of L0–L5 Levels
4.2.1. L0—Mechanical Execution Level
4.2.2. L1—Environmental Perception Level
4.2.3. L2—Intelligent Assistance Level
4.2.4. L3—Autonomous Decision-Making Level
4.2.5. L4—Health Steward Level
- Flexible electronic skin, millimeter-wave radar, and other multi-source sensors to enable non-intrusive monitoring of pressure, temperature, electromyography (EMG), electrodermal activity (EDA), electrocardiography (ECG), and vital signs.
- Digital modeling of traditional Chinese medicine acupoints and path optimization algorithms to enhance precise adaptation to individualized acupoints.
- Federated learning and cloud-based health profiling platforms to support multidevice data collaboration and secure sharing.
4.2.6. L5—Preventive Intervention Level
- Multiple types of non-invasive sensors for long-term physiological monitoring.
- Predictive algorithms such as machine learning and knowledge graphs to perform temporal prediction of health data and construct personalized user models.
- Integration of edge computing and cloud services to enable cross-scenario data sharing and privacy protection.
4.3. L0–L5 Level Capability Analysis
- L0–L1: The main task dimensions fall within the lowest (0–20%) or initial (21–40%) maturity intervals, with only localized responses observed in S3 and S4. This indicates that system functions rely heavily on external triggers or mechanical execution, resulting in a low level of intelligence. S1, S2, S5, and S6 remain largely undeveloped, showing the absence of critical capability support.
- L2–L3: Most task dimensions enter the medium maturity range (41–80%). Among them, the average maturity of five task dimensions (S1–S5) falls between 70% and 85%, while S6 rises sharply from about 10% at L1 to about 50% at L2. This reflects the system’s partial realization of closed-loop control and a significant enhancement in its ability to dynamically model user states.
- L4: Most task dimensions fall within the 81–95% deep-blue range, with S1–S6 capabilities highly coordinated. This indicates that the system has achieved a high-quality closed loop of perception, decision-making, execution, and feedback.
- L5: All task dimensions enter the 96–100% range, shown in the darkest blue in the figure, representing fully matured, end-to-end intelligent closed-loop capabilities.
4.4. Grading System Verification
- Very low group: FDS_score, APM_score, and HMIB_score are all set to 0.05, and the calculated score of falls in the interval [0.000, 0.167), corresponding to level L0.
- Midpoint group: The three-dimensional scores are all set to 0.425, and the score falls in the interval [0.350, 0.500), corresponding to the L2 level.
- Extremely high group: The three-dimensional scores were all set to 0.95, and the score fell in the interval [0.833, 1.000], corresponding to level L5.
5. Conclusions
- (1)
- To address the lack of evaluation for functional depth and proactiveness in the IMS operational process, an MDT model is proposed, which divides the system operation process into six subtasks (S1–S6). On this basis, a three-dimensional capability measurement framework, consisting of FDS, APM, and HMIB, is established to characterize the system’s agent capability and proactiveness level in each subtask.
- (2)
- In response to the current lack of reproducible quantitative methods, eight key performance indicators were selected to comprehensively reflect the intelligence level of the system. The Delphi method combined with the AHP was used to determine the weights of the indicators. The three-dimensional capability scores and the overall intelligence degree were then calculated through normalization and weighted summation. Subsequently, within the [0, 1] interval, the grading thresholds for L0–L5 were determined by combining equal-interval division with expert calibration, thereby achieving a quantitative mapping from the original performance indicators to the corresponding intelligence levels.
- (3)
- To address potential minor errors that may occur in the practical application of the grading system, experiments involving extreme-value and midpoint mapping of typical test vectors were designed, and a sensitivity analysis was conducted by introducing ±10% numerical perturbations to the midpoint group. The results indicate that the grading decisions remain stable within common error ranges, thereby verifying the stability and robustness of the grading system.
- (1)
- This study introduces the task-driven concept into the IMS capability grading framework for the first time. It integrates the three-dimensional capability framework, comprising FDS, APM, and HMIB, with the MDT model to establish a structured “Task-Capability-Level” mapping. This work fills the research gap in capability grading within the IMS domain and provides a quantifiable theoretical foundation for evaluating the capabilities of intelligent healthcare devices.
- (2)
- This study proposes a reproducible IMS grading method that combines the Delphi method and the AHP to determine indicator weights, followed by normalization and overall intelligence degree calculation. The resulting quantitative standard can be directly applied to product design, performance benchmarking and technical optimization.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Dimension/Aspect | Example Function | Technology Example | Core Advantage |
---|---|---|---|
Massage Strategy | Adaptive adjustment driven by physiological signals | Heart-rate sensor, EMG detection + adaptive control algorithm | Real-time response to user state; high personalization |
Massage Track | Dynamic path planning combining vision and algorithms | Depth camera/RGB camera + path-planning/optimization algorithms | Highly precise trajectories; adapts to varied postures and body shapes |
Massage Mode | Traditional motions (kneading, tapping, rolling) + multimodal operations (heat therapy, electrical pulse, air-bag compression) | Multi-axis motor drive + heating elements + pneumatic control + pulse modules | Rich, composite actions; enhanced comfort and efficacy |
Subtasks | N | L | F |
---|---|---|---|
S1 | Fully manual | Basic perception | Closed-loop intelligent identification |
S2 | Manual selection by user | Preset programs | Intelligent dynamic recommendation |
S3 | Manual adjustment | Step adjustment | Adaptive adjustment |
S4 | No feedback | Simple instructions | Intelligent interaction |
S5 | User-controlled | Basic safety | Smart protection |
S6 | No continuous learning | Parameter memory | Deep learning and strategy optimization |
Indicator Code | Indicator Name | Dimension | Unit |
---|---|---|---|
P1 | Task recognition accuracy | FDS-Perception | % |
P2 | Abnormal detection sensitivity | APM | % |
D1 | Recommendation hit rate | FDS-Decision | % |
D2 | Decision response delay | FDS-Decision | s |
E1 | Force control error | FDS-Execution | N |
E2 | Path tracking accuracy | FDS-Execution | mm |
F1 | Physiological feedback response rate | HMIB-Feedback | % |
F2 | User subjective satisfaction | HMIB-Feedback | point |
Number | Question |
---|---|
1 | Is it important for the massage system to accurately identify your physical state? For example, it can distinguish whether you are “tired” or “relaxed”. |
2 | Is it important for the massage system to detect equipment failures in a timely manner? For example, problems such as sensor abnormalities and massage head jams can be detected quickly. |
3 | Is it important that the massage program recommended by the massage system meets your needs? |
4 | Is the speed at which the massage system makes decisions important? |
5 | Is the accuracy of the massage system’s force control important? |
6 | Is the accuracy of the massage system’s path tracking important? |
7 | Is it important for the massage system to adjust in real time based on your physiological signals? |
8 | Is your overall satisfaction with the massage experience important? |
Indicator Code | ||
---|---|---|
P1 | 4.78 | 0.44 |
P2 | 3.44 | 0.53 |
D1 | 3.67 | 0.50 |
D2 | 4.78 | 0.44 |
E1 | 4.78 | 0.44 |
E2 | 4.78 | 0.44 |
F1 | 4.67 | 0.50 |
F2 | 3.78 | 0.44 |
Indicator Code | |||
---|---|---|---|
P1 | 0.125 | 0.138 | 0.013 |
P2 | 0.090 | 0.100 | 0.010 |
D1 | 0.096 | 0.104 | 0.008 |
D2 | 0.125 | 0.138 | 0.013 |
E1 | 0.125 | 0.138 | 0.013 |
E2 | 0.125 | 0.137 | 0.012 |
F1 | 0.122 | 0.129 | 0.007 |
F2 | 0.113 | 0.117 | 0.004 |
Level | Threshold Interval |
---|---|
L0 | [0.000, 0.167) |
L1 | [0.167, 0.350) |
L2 | [0.350, 0.500) |
L3 | [0.500, 0.650) |
L4 | [0.650, 0.833) |
L5 | [0.833, 1.000] |
Expert ID | FDS vs. APM | FDS vs. HMIB | APM vs. HMIB |
---|---|---|---|
E1 | 5 | 4 | 3 |
E2 | 4 | 4 | 3 |
E3 | 5 | 4 | 2 |
E4 | 4 | 3 | 3 |
E5 | 5 | 5 | 4 |
E6 | 5 | 4 | 3 |
E7 | 4 | 3 | 3 |
E8 | 5 | 4 | 3 |
Subtasks | Whether It Has | Ability to Achieve |
---|---|---|
S1 | × | No automatic body shape/posture detection |
S2 | × | No solution recommendation algorithm |
S3 | √ | Supports fixed path/sequence execution, but lacks feedback correction mechanisms |
S4 | √ | Can operate along fixed paths, but lacks online replanning capability |
S5 | × | No anomaly detection or alerting capability |
S6 | × | No user modeling or adaptive capability |
Subtasks | Whether It Has | Ability to Achieve |
---|---|---|
S1 | √ | Basic body shape/posture detection |
S2 | √ | Program library scheme recommendation, slight improvement in D1 |
S3 | √ | Execution of preset force/sequence (±20%), without adaptive correction |
S4 | √ | Sequential execution of preset paths, without dynamic force allocation |
S5 | √ | Fixed rule-based alarm triggering, longer D2 response delay |
S6 | × | Only records basic usage parameters, no user modeling and adaptation |
Subtasks | Whether It Has | Ability to Achieve |
---|---|---|
S1 | √ | Multi-angle body scanning, P1 reaches the middle level |
S2 | √ | Based on historical preference personalized recommendation, D1 significantly improved |
S3 | √ | Strength/rhythm error ± 10%, limited fine-tuning possible based on real-time feedback |
S4 | √ | Multi-area coordinated dynamic adjustment, key parts can be adjusted dynamically with simple strength |
S5 | √ | Automatically identifies common faults and can quickly perform decompression or pause operations |
S6 | √ | Preliminary adaptive learning of physiological signals |
Subtasks | Whether It Has | Ability to Achieve |
---|---|---|
S1 | √ | Multi-sensor dynamic body shape/posture recognition |
S2 | √ | Online learning drives solution optimization |
S3 | √ | Strength/rhythm error ± 10%, multiple fine-tuning can be performed based on real-time feedback |
S4 | √ | Multi-area collaborative dynamic adjustment, continuous action switching between complex parts |
S5 | √ | Multi-stage intelligent intervention for complex abnormalities |
S6 | √ | Continuous closed-loop learning and precise recommendations |
Subtasks | Whether It Has | Ability to Achieve |
---|---|---|
S1 | √ | Real-time identification of multimodal health status |
S2 | √ | Dynamic plan generation driven by health goals |
S3 | √ | ±3% velocity/rhythm error before active pre-adjustment parameters |
S4 | √ | Cross-site multi-stage continuous health intervention |
S5 | √ | Predictive warning and intervention for subtle health fluctuations |
S6 | √ | Long-term health record construction and personalized strategy promotion |
Subtasks | Whether It Has | Ability to Achieve |
---|---|---|
S1 | √ | Multi-source perception and physiological state prediction |
S2 | √ | Big data-driven dynamic rehabilitation/massage program |
S3 | √ | The force and rhythm error within ±1% can be automatically adjusted based on the prediction results |
S4 | √ | Execute customized continuous actions to achieve preventive health interventions for the whole body |
S5 | √ | Predictive warning and intervention for subtle health fluctuations |
S6 | √ | Predict potential health risks and automatically implement intervention measures |
S6 | √ | Online learning and real-time improvement of health profiles |
Disturbance Amplitude | Calculated So Value | Corresponding Level |
---|---|---|
±0% | 0.4253 | L2 |
+10% | 0.4665 | L2 |
−10% | 0.3831 | L2 |
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Wang, L.; Wang, J.; Guo, M.; Liu, G.; Fang, M.; Yan, X.; Wang, H.; Chen, B.; Zhu, Y.; Hu, J.; et al. Research on a Task-Driven Classification and Evaluation Framework for Intelligent Massage Systems. Appl. Sci. 2025, 15, 9327. https://doi.org/10.3390/app15179327
Wang L, Wang J, Guo M, Liu G, Fang M, Yan X, Wang H, Chen B, Zhu Y, Hu J, et al. Research on a Task-Driven Classification and Evaluation Framework for Intelligent Massage Systems. Applied Sciences. 2025; 15(17):9327. https://doi.org/10.3390/app15179327
Chicago/Turabian StyleWang, Lingyu, Junliang Wang, Meixing Guo, Guangtao Liu, Mingzhu Fang, Xingyun Yan, Hairui Wang, Bin Chen, Yuanyuan Zhu, Jie Hu, and et al. 2025. "Research on a Task-Driven Classification and Evaluation Framework for Intelligent Massage Systems" Applied Sciences 15, no. 17: 9327. https://doi.org/10.3390/app15179327
APA StyleWang, L., Wang, J., Guo, M., Liu, G., Fang, M., Yan, X., Wang, H., Chen, B., Zhu, Y., Hu, J., & Qi, J. (2025). Research on a Task-Driven Classification and Evaluation Framework for Intelligent Massage Systems. Applied Sciences, 15(17), 9327. https://doi.org/10.3390/app15179327