【AIGC One Sentence Reading】:基于改进GCP-YOLOv8s的绝缘子缺陷检测方法,通过轻量化设计和特征提取增强,有效解决了复杂背景下小缺陷检测难题,实现了高精度与模型轻量化的平衡。
【AIGC Short Abstract】:针对航拍图像中绝缘子缺陷检测的挑战,本研究提出基于改进GCP-YOLOv8s的轻量化检测方法。通过引入GSConv、优化模块设计、增强特征提取及融合策略,有效降低了模型参数,提升了小缺陷检测精度。实验显示,该方法在保持高检测精度的同时,显著减轻了模型负担,实现了轻量化与性能的优化平衡。
Note: This section is automatically generated by AI . The website and platform operators shall not be liable for any commercial or legal consequences arising from your use of AI generated content on this website. Please be aware of this.
Abstract
To address the challenges of difficulty in capturing small defects in complex backgrounds and a large number of model parameters in insulator defect detection from aerial images, we proposed an UAV insulator defect detection method based on improved GCP-YOLOv8s. First, GSConv was incorporated into the network to replace conventional convolutions, reducing the model's parameter count. Second, the Bottleneck module in C2f was replaced by the FasterNet Block module, creating a lightweight C2f-Faster module that further minimized model size. To improve the network's feature extraction capability, the efficient multi-scale attention (EMA) was integrated into the C2f-Faster forward network, forming the CF-EMA lightweight feature extraction module, which effectively addressing the challenge of extracting small defect features in complex backgrounds. Finally, to prevent the loss of minor defect feature information, additional minor defect detection layers were added to improve the fusion of shallow and deep feature maps, enhancing the detection accuracy for small defects. The experimental results demonstrate that GCP-YOLOv8s achieves an mAP@0.5 of 97.6%, marking an improvement of 1.8 percentage points over YOLOv8s, with a parameter count of only 7.2×106, representing a 36.3% reduction compared to YOLOv8s. The proposed method demonstrates an effective balance between detection accuracy and model lightweight.