Transmission Line Defect Detection via an Integrated Improved YOLOv8 and Deep Neural Random Forest Framework
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How to effectively identify defects in power transmission lines using unmanned aerial vehicle (UAV) technology remains a key research focus. This paper presents an optimization over traditional convolutional neural networks by proposing a spatially deformable convolution (SDC) algorithm to enhance feature extraction from images. Additionally, a more comprehensive hybrid loss function is introduced to improve the model's ability to recognize multi-scale defect patterns. A deep neural decision forest (DNDF) is then employed to perform fine-grained classification of candidate regions, outputting precise defect categories. Experimental validation shows that the proposed algorithm achieves recognition accuracy above 92% for five types of conditions: normal, stains, cracks, corrosion, and surface peeling. Compared with several conventional detection methods, the algorithm demonstrates notable improvements. For instance, relative to Faster R-CNN, it increases detection speed by 36 FPS and reduces the number of parameters by 54.57%. When compared with YOLOv7-M, YOLOv9-C, and YOLOv11-M, although inference speed is slightly reduced, the mean average precision (mAP) is improved by 2.6%, 2.38%, and 1.9%, respectively, due to increased algorithmic complexity. These results confirm that the proposed approach can effectively identify multi-scale defects in transmission lines.