APPLICATION OF THE OPTIMISED YOLOv3 ALGORITHM IN SUBSTATION POWER EQUIPMENT DEFECT IDENTIFICATION AND DETECTION, 235-243.

Ti Liu, Jia Feng, Dahong Fu, and Wenhan Chen

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