A Comprehensive Review of Deep Learning Applications in Cotton Industry: From Field Monitoring to Smart Processing
Abstract
:1. Introduction
- The application of deep learning in the cotton cultivation stage;
- The application of deep learning in cotton growth management;
- Application of deep learning in cotton harvesting and processing.
2. The Application of Deep Learning in the Cotton Cultivation Stage
2.1. Cotton Seed Selection and Variety Optimization
2.1.1. Deep Learning-Based Cotton Seed Quality Detection
- High equipment costs and deployment constraints: hyperspectral imaging systems and deep learning models require substantial computational resources, which may limit their adoption in resource-constrained agricultural settings.
- Data acquisition difficulties: The training of deep learning models depends on large-scale, high-quality datasets. However, agricultural data collection is often constrained by environmental conditions, equipment limitations, and technical capacity, potentially leading to insufficient data quality and quantity, which undermines model performance.
- Limited model generalization: The variability of agricultural environments—including lighting conditions, soil types, and climatic changes—can affect model generalization. More robust models are needed to address these challenges.
2.1.2. Cotton Genomic Data Analysis and Variety Improvement
- High costs and computational resource limitations: Genome-wide identification and expression analysis are costly, which may limit their large-scale application in resource-limited agricultural environments. Moreover, the computational resource requirements of deep learning models pose a challenge for research teams or agricultural enterprises with limited hardware capabilities.
- Database compatibility issues: although cotton-specific genomic databases have been gradually improved in recent years, poor compatibility between different databases makes data integration and sharing difficult, thus hindering the efficient use of data.
- Data annotation and model generalization: The application of deep learning in genomic research relies heavily on high-quality annotated data. However, data acquisition in agriculture is constrained by environmental conditions and experimental design, leading to varying data quality. Furthermore, the complexity of genomic data means that the generalization ability of deep learning models needs further optimization to enhance their adaptability to different environments and breeding contexts.
2.2. Soil Testing and Precision Sowing
2.2.1. Application of Remote Sensing and Computer Vision in Soil Quality Assessment
- When combined with field sampling, laboratory analysis, and machine learning, remote sensing effectively monitors key soil parameters such as organic carbon, nitrogen content, and salinization, optimizing management strategies.
- UAV imagery, satellite data, and ground-based spectral measurements support nitrogen management, planting density optimization, yield prediction, and soil degradation monitoring.
- Deep learning demonstrated superior performance in soil quality assessment and prediction, enabling efficient and accurate analysis of soil data.
- Limited spatial resolution hampers detection of fine-scale soil variations, constraining precision in localized management.
- Multi-source data fusion is hindered by inconsistencies in format, resolution, and quality across datasets, complicating integration and error correction.
- Environmental variability—including climate change, pest outbreaks, and anthropogenic factors—affects soil quality, yet current models insufficiently account for such dynamic influences.
- Acquisition and application of high-resolution remote sensing data to improve the detection of small-scale variations in soil properties;
- Optimization of multi-source data fusion techniques to increase compatibility across data sources and improve the efficiency of information integration;
- Developing robust deep learning models adaptable to environmental variability, improving the reliability of soil quality assessments in precision agriculture.
2.2.2. Deep Learning-Based Intelligent Sowing System
- Vision- and deep learning-based intelligent systems can monitor seeding quality in real time, optimize parameters, and promote agricultural automation.
- Combining UAV remote sensing, morphological analysis, and intelligent algorithms improves cotton emergence detection and supports replanting decisions.
- Environmental adaptability: current systems need better resilience to varying soil types, climates, and crop species.
- Multimodal fusion and precision decision-making: integrating remote sensing, ground monitoring, and DL to refine seeding strategies is still under development.
- High hardware costs: dependence on precision sensors and automated machinery limits adoption, especially in resource-limited regions.
- Enhancing model adaptability to improve the generalization of intelligent seeding systems under diverse field conditions;
- Optimizing data fusion strategies by integrating multi-source data—including remote sensing, ground-based monitoring, and machinery operation data—to improve seeding precision;
- Reducing hardware costs and increasing system accessibility to promote the widespread adoption of intelligent seeding systems in global agricultural production.
2.3. Pest and Disease Detection and Management
2.3.1. Diagnosis of Cotton Pests and Diseases
2.3.2. Early Warning Systems and Precision Prevention and Control Strategies
- Integrating early warning with precise, evidence-based control strategies;
- Designing intuitive, user-friendly system interfaces;
- Adapting technologies to suit resource-constrained agricultural settings to facilitate broader adoption in precision pest and disease management.
3. The Application of Deep Learning in Cotton Growth Management
3.1. Crop Growth Monitoring and Health Assessment
3.1.1. Cotton Growth Monitoring
- Lighting variations: while preprocessing can mitigate illumination effects, extreme lighting and complex field environments (e.g., dynamic shadows) still affect detection stability, limiting practical deployment.
- Generalization limitations: models trained on data from specific cotton fields often lack validation across diverse regions, varieties, soils, and climates, reducing their adaptability.
- Model complexity: high computational demands and large parameter sizes hinder deployment on resource-limited platforms such as UAVs and field devices, necessitating lightweight, efficient architectures.
3.1.2. Yield Prediction
- Model generalization: Most models are region-specific and lack cross-regional validation. Expanding datasets to cover diverse environments is essential to enhance adaptability and robustness.
- Quality of remote sensing data: UAV and satellite imagery are affected by weather, sensor precision, and acquisition methods, impacting model performance. Improved preprocessing techniques—such as denoising, illumination correction, and enhancement—are needed to ensure data consistency.
- Long-term prediction: Current models often focus on intra-season forecasts, with limited attention to multi-year trends. Incorporating multi-year remote sensing and meteorological data with temporal models (e.g., Transformers, Bi-LSTM) could improve long-term forecasting and strategic planning.
3.2. Intelligent Lrrigation and Fertilization
- Model interpretability: deep learning models, though effective in uncertainty management, often lack transparency, limiting their applicability in agricultural settings that demand traceable and explainable decision-making.
- Data transmission and control limitations: in large-scale farms, data transmission delays—exacerbated by poor network infrastructure or high data volumes—can compromise real-time control, underscoring the need for efficient transmission protocols and edge computing.
- Data scarcity: In regions with limited or unstable meteorological and remote sensing data, model performance may degrade. Robust preprocessing and imputation techniques are essential to enhance model generalization and reliability.
- Integrating explainable AI (XAI) to improve model transparency and usability;
- Advancing edge computing and data transmission frameworks for real-time responsiveness;
- Enhancing data imputation and augmentation to support model performance in data-limited environments.
3.3. Weed Detection and Precision Weed Control
3.3.1. Field Weed Identification
- Complex field environments and weed variability: dynamic conditions—such as fluctuating lighting, soil backgrounds, and weed growth stages—can lead to recognition errors and reduce detection robustness.
- Limited generalization: many models are trained on region-specific datasets and recognize only a few weed species, with uncertain performance on unseen types or under diverse conditions.
- Short-term focus: Most research emphasizes single-season detection, with limited assessment of long-term weed control impacts on cotton growth and yield.
- Expanding dataset diversity to enhance model generalization across different environments, lighting, soil types, and weed stages;
- Incorporating multispectral and hyperspectral imaging to improve species-level discrimination, especially when weeds and crops have similar visual features;
- Developing long-term monitoring frameworks using temporal models (e.g., LSTM, Transformer) to assess the prolonged effects of weed management strategies on crop performance.
3.3.2. Weeding System and Intelligent Spraying System
- A.
- Weeding System
- Limited generalizability and modularity: Most current systems are crop-specific and lack versatility. Future research can focus on modular tool designs that support quick attachment changes or develop multi-crop-compatible intelligent weeding platforms.
- Navigation and energy limitations: Autonomous navigation and energy supply remain critical bottlenecks. Enhancing localization accuracy and reducing reliance on human intervention, along with integrating renewable energy sources such as solar power, could improve performance and sustainability in large-scale operations.
- B.
- Intelligent Spraying System
- Coordinated management in large-scale operations: In expansive fields, multiple UAVs or autonomous sprayers require effective task allocation, communication, and collaborative control. Optimizing path planning, avoiding redundant spraying, and coordinating task distribution are key research priorities;
- Precision spraying and environmental protection: While systems can adjust pesticide type and dosage based on disease classification, further improvements are needed to ensure chemicals are applied exclusively to target vegetation. Integration of path optimization, spray control algorithms, and advanced nozzle technologies is essential;
- Robustness under complex lighting conditions: Reduced recognition accuracy under shaded or uneven lighting remains a concern. Solutions may include multispectral imaging, high dynamic range techniques, and adaptive illumination correction algorithms.
- Developing collaborative control strategies for multi-device coordination;
- Enhancing environmental adaptability to maintain accuracy in complex conditions such as dense vegetation and low-light environments;
- Integrating multi-sensor fusion (e.g., RGB, thermal, and multispectral) to improve decision reliability in precision spraying.
4. Application of Deep Learning in Cotton Harvesting and Processing
4.1. Intelligent Harvesting Robot
- Reliance on prior knowledge for obstacle avoidance: Most current algorithms depend on predefined information, limiting their ability to respond to unknown obstacles. Future research should explore self-supervised learning and model-free reinforcement learning to enable autonomous learning in complex environments.
- Limited navigation performance in complex terrains: Navigation accuracy and stability remain insufficient in scenarios involving curved paths, uneven terrain, and crop row transitions. Integrating multimodal sensor fusion (e.g., RGB-D cameras and LiDAR) and fusion technologies [159] may improve adaptability.
- Lack of open agricultural datasets: The scarcity of standardized datasets constrains model training and evaluation. Establishing large-scale, publicly available agricultural image and path datasets would enhance the generalization of deep learning models and accelerate intelligent equipment development.
- Developing adaptive obstacle avoidance strategies through autonomous learning in unknown environments;
- Optimizing path planning by combining reinforcement learning with dynamic search algorithms to improve performance in complex field conditions;
- Building comprehensive agricultural datasets to support robust model training and improve real-world applicability.
4.2. Cotton Quality Inspection and Grading
4.2.1. Fiber Quality Inspection
- The quality of image capture may be influenced by lighting conditions and the positioning of samples, necessitating further optimization of hardware design to minimize the impact of environmental factors.
- For most models, detecting small targets remains a challenge. For instance, the detection capability of the model may decrease when identifying foreign fibers smaller than 0.5 mm2.
4.2.2. Cotton Impurity Identification
- Limited datasets and poor model generalization: Most existing datasets are derived from controlled environments and fail to represent the variability of real-world conditions, such as lighting changes, background interference, and regional cotton color differences. Enhanced testing and optimization in diverse field and factory settings are needed to improve model robustness and generalizability.
- High computational complexity limiting real-time performance: On high-speed production lines, some deep learning models are too computationally intensive, hindering real-time detection. Future research should prioritize lightweight architectures (e.g., MobileNet, ShuffleNet) and employ techniques such as model pruning, quantization, and edge computing to enhance deployment efficiency.
- Expanding dataset size to enhance model generalization, ensuring high accuracy across varying lighting conditions, backgrounds, and cotton varieties;
- Optimizing model structures using lightweight CNNs, Transformers, and adaptive enhancement methods to ensure real-time, efficient detection;
- Incorporating multi-modal sensing technologies (e.g., polarization imaging, NIR spectroscopy) to enhance impurity recognition under complex conditions.
5. Discussion
5.1. Challenges
5.1.1. High Cost of Data Acquisition and Annotation
5.1.2. Interpretability Issues of Deep Learning Models
5.1.3. Computational Resource Constraints and Challenges in Practical Deployment
5.2. Future Perspectives
- Developing XAI techniques, such as attention visualization and causal inference-based explanations, to reveal neural network decision processes;
- Creating lightweight, transparent models to reduce computational complexity, improve interpretability, and ensure their broad applicability in agriculture, thereby increasing trust in intelligent agricultural systems among farmers and researchers.
- Model compression and acceleration: Techniques such as pruning, quantization, knowledge distillation, and low-rank decomposition can significantly reduce model size and computational load. For instance, pruning eliminates redundant weights, while quantization replaces floating-point operations with low-bit integer calculations to accelerate inference [188];
- Lightweight network design: architectures such as MobileNet, ShuffleNet, EfficientDet, and YOLOv7 reduce resource consumption, making them suitable for deployment on mobile and embedded devices [189];
- Advanced architecture exploration: investigating state-of-the-art models such as YOLOv12 can enhance both detection accuracy and processing speed, improving adaptability in dynamic agricultural environments;
- Semi-supervised and self-supervised learning: These approaches reduce dependence on large labeled datasets and improve model generalization across diverse conditions. Additionally, methods such as wavelet interpolation transformations can be employed to further boost model robustness and performance [190,191].
- Optimizing in-memory computing architectures to reduce data transfer overhead, improve energy efficiency, and support heterogeneous hardware (e.g., GPUs, CPUs, and FPGAs) through universal scheduling frameworks [192];
- Leveraging cloud and distributed computing to provide more powerful training and inference capabilities for deep learning, while integrating cloud–edge collaborative computing to reduce data transmission and enhance the intelligence of agricultural equipment [193];
- Adopting hardware acceleration technologies, such as TensorRT, Google Edge TPU, and FPGAs, to boost model performance and reduce energy consumption [194];
- Designing energy-efficient AI devices to support low-power deep learning applications suitable for agricultural scenarios.
- Constructing multi-view, high-precision datasets that span growth stages, lighting conditions, and regions to improve model generalization;
- Applying transfer learning and few-shot learning to reduce dependence on extensive labeled data, enabling broader applicability in data-scarce regions [195];
- Fusing multi-modal data, such as remote sensing, meteorological, soil moisture, and growth data, to build comprehensive agricultural monitoring systems;
- Promoting open data sharing and establishing standardized cotton datasets to facilitate global collaboration and innovation.
- Early disease detection systems using multi-source data to monitor and control pests and diseases such as fusarium wilt and cotton bollworm;
- Individual plant-level management through computer vision and UAVs for optimizing irrigation, fertilization, and pest control;
- Intelligent spraying and selective weeding systems using object detection to precisely apply agrochemicals, reducing environmental impact and improving efficiency.
- The large volumes of data generated during cotton cultivation and processing involve personal information of farmers and agricultural workers. Therefore, how to appropriately handle and protect this data, ensuring that its use complies with ethical and legal standards, is crucial for future development.
- Data sharing and collaboration should follow a governance framework that protects the interests of all parties involved, while also promoting data flow and sharing to support more precise agricultural decision-making.
- In regions with limited technological and financial resources, there may be challenges in adopting and benefiting from these technologies, which could further exacerbate the digital divide between rural and urban areas, as well as between countries.
- Future AI applications in agriculture should take into account accessibility across different regions and groups, ensuring that the use of AI does not widen the wealth gap, but instead helps a broader range of farmers and agricultural workers.
- As automation and intelligent equipment become more common, some traditional agricultural jobs may decrease or disappear. Therefore, future research should explore labor retraining and skill transition programs to help affected farmers and workers adapt to the changes brought by new technologies.
- Furthermore, the shift in agricultural production methods due to AI applications may affect agricultural policies, market supply and demand relationships, and global trade dynamics. Therefore, future studies should not only focus on technological advancements, but also conduct in-depth analysis of the potential socioeconomic consequences.
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Criteria Type | Description |
---|---|
Inclusion | 1. The research focuses on specific stages within the cotton value chain, such as planting, pest and disease identification, harvesting, grading, and processing. |
2. At least one mainstream deep learning algorithm (e.g., CNN, RNN, Transformer, YOLO) is employed in the study. | |
3. The selected papers are published in either Chinese or English to ensure readability and accurate comprehension. | |
4. The studies are based on real-world field or factory data, or are validated, rather than purely theoretical models or simulation tests. | |
5. All selected papers are peer-reviewed journal or conference papers, ensuring academic rigor and verifiability. | |
Exclusion | 1. The study exclusively uses traditional machine learning methods (e.g., SVM, RF, and KNN), without employing deep learning techniques. |
2. The paper is limited to a technical review or patent literature, without original experimental data or performance results. | |
3. The paper lacks a complete model architecture description or experimental validation, such as those that describe methods without performance evaluation. |
Application Type | Common Models | Common Evaluation Metrics | Typical Tasks/Examples |
---|---|---|---|
Image classification | CNN, ResNet, VGG, DenseNet | Accuracy, precision, recall, F1-score, AUC | Cotton species classification, disease type identification, and damage detection |
Object detection | YOLO(v5/v8), Faster R-CNN YOLOX, CenterNet | mAP(@50 or @0.5:0.95) precision, recall, FPS | Cotton damage detection, cotton bollworm identification, and disease localization |
Image segmentation | U-Net, SegNet, DeepLabV3+ | IoU, dice coefficient | Cotton field area segmentation, cotton plant recognition, and cotton leaf lesion area extraction |
Regression prediction | LSTM, GRU, MLP, 1D-CNN, Transformer | RMSE, MAE, R2, MSE | Cotton yield prediction, vitality forecasting, and growth stage estimation |
Multimodal/fusion recognition | CNN + GLCM, Transformer + KGE YOLO + SRNet | Accuracy, mAP, FPS, recall | Hyperspectral + texture feature fusion, knowledge graph-assisted recognition, and small object enhancement detection |
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© 2025 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
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Yang, Z.-Y.; Xia, W.-K.; Chu, H.-Q.; Su, W.-H.; Wang, R.-F.; Wang, H. A Comprehensive Review of Deep Learning Applications in Cotton Industry: From Field Monitoring to Smart Processing. Plants 2025, 14, 1481. https://doi.org/10.3390/plants14101481
Yang Z-Y, Xia W-K, Chu H-Q, Su W-H, Wang R-F, Wang H. A Comprehensive Review of Deep Learning Applications in Cotton Industry: From Field Monitoring to Smart Processing. Plants. 2025; 14(10):1481. https://doi.org/10.3390/plants14101481
Chicago/Turabian StyleYang, Zhi-Yu, Wan-Ke Xia, Hao-Qi Chu, Wen-Hao Su, Rui-Feng Wang, and Haihua Wang. 2025. "A Comprehensive Review of Deep Learning Applications in Cotton Industry: From Field Monitoring to Smart Processing" Plants 14, no. 10: 1481. https://doi.org/10.3390/plants14101481
APA StyleYang, Z.-Y., Xia, W.-K., Chu, H.-Q., Su, W.-H., Wang, R.-F., & Wang, H. (2025). A Comprehensive Review of Deep Learning Applications in Cotton Industry: From Field Monitoring to Smart Processing. Plants, 14(10), 1481. https://doi.org/10.3390/plants14101481