Photovoltaic Panel Defect Detection Based on Ghost Convolution with BottleneckCSP and Tiny Target Prediction Head Incorporating YOLOv5
Longlong Li, Zhifeng Wang, Tingting Zhang

TL;DR
This paper introduces GBH-YOLOv5, a novel computer vision approach combining Ghost convolution, BottleneckCSP, and a tiny target prediction head to improve PV panel defect detection accuracy, especially for small defects.
Contribution
The paper proposes a new PV defect detection model integrating Ghost convolution, BottleneckCSP, and a tiny target prediction head within YOLOv5, enhancing detection accuracy and speed.
Findings
Improves mAP performance by at least 27.8%.
Effectively detects tiny defects on PV panels.
Reduces model inference time and parameters.
Abstract
Photovoltaic (PV) panel surface-defect detection technology is crucial for the PV industry to perform smart maintenance. Using computer vision technology to detect PV panel surface defects can ensure better accuracy while reducing the workload of traditional worker field inspections. However, multiple tiny defects on the PV panel surface and the high similarity between different defects make it challenging to {accurately identify and detect such defects}. This paper proposes an approach named Ghost convolution with BottleneckCSP and a tiny target prediction head incorporating YOLOv5 (GBH-YOLOv5) for PV panel defect detection. To ensure better accuracy on multiscale targets, the BottleneckCSP module is introduced to add a prediction head for tiny target detection to alleviate tiny defect misses, using Ghost convolution to improve the model inference speed and reduce the number of…
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Taxonomy
TopicsAdvanced Neural Network Applications · Photovoltaic System Optimization Techniques · Industrial Vision Systems and Defect Detection
MethodsSPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings · Convolution
