YOLO-FGA: A Lightweight yet High-Precision Network for Fine-Grained Anomaly Detection in Computer Chassis Assembly
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The intelligent detection of computer chassis assembly states is a crucial for ensuring quality control and improving production efficiency in large-scale computer manufacturing processes. To overcome the limitations of traditional methods in dealing with complex internal backgrounds, subtle assembly differences, and frequent component occlusions, this paper proposes a lightweight detection framework, YOLO-FGA (You Only Look Once-Fine-Grained Anomaly), and presents an optimized design tailored to industrial computer vision applications. The model integrates the Re-parameterized Gradient Efficient Layer Aggregation Network (RepGELAN) in the YOLOv11 backbone structure, significantly enhancing the ability to extract features for subtle assembly differences. Additionally, a novel Contextual Anchor Attention Feature Pyramid Network (CASA-FPN) is introduced in the Neck structure, which resolves feature misalignment caused by occlusions and complex backgrounds via adaptive multi-scale fusion. Furthermore, a channel-wise knowledge distillation (CWKD) strategy is employed to enhance detection robustness while maintaining computational efficiency. Evaluation on a dataset containing 15 chassis components demonstrates that the YOLO-FGA model, after incorporating knowledge distillation, achieves significant performance improvements compared to YOLOv11: a 1.1% increase in mAP50, a 1.2% increase in mAP50:95, a 4.1% increase in accuracy, a 2% increase in F1 score, and a 30% reduction in number of parameters. These results demonstrate the potential and effectiveness of the method in high-precision and resource-efficient quality inspection systems for assembly states.