2023
DOI: 10.1117/1.jei.32.4.043014
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MI-YOLO: more information based YOLO for insulator defect detection

Abstract: Insulators that connect high-voltage transmission lines may experience various faults due to long-term exposure to the natural environment, leading to safety degradation and reliability issues in power grids. Therefore, detecting defective insulators through daily maintenance and long-term overhaul is crucial. We propose an insulator defect detection method to achieve this objective, using a novel neural network named more information-you only look once (MI-YOLO). MI-YOLO includes several modifications compare… Show more

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Cited by 5 publications
(4 citation statements)
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“…GC-YOLO integrates the Ghost convolution module into the backbone network, adds the CA attention mechanism, introduces the EVCBlock module in the neck layer, and includes an additional small object detection head in the detection layer. Luan et al [ 41 ] introduced MI-YOLO, an improved network based on YOLOv5, featuring a skip connection module with down-sampling in the backbone network, a neck layer with a spatial pyramid dilated convolution module, and the addition of a novel serial-parallel spatial-channel attention module. The evaluation metrics included precision (P), recall (R), mAP0.5, model parameters, FLOPs (Floating-Point Operations Per Second), and frames per second (FPS).…”
Section: Methodsmentioning
confidence: 99%
“…GC-YOLO integrates the Ghost convolution module into the backbone network, adds the CA attention mechanism, introduces the EVCBlock module in the neck layer, and includes an additional small object detection head in the detection layer. Luan et al [ 41 ] introduced MI-YOLO, an improved network based on YOLOv5, featuring a skip connection module with down-sampling in the backbone network, a neck layer with a spatial pyramid dilated convolution module, and the addition of a novel serial-parallel spatial-channel attention module. The evaluation metrics included precision (P), recall (R), mAP0.5, model parameters, FLOPs (Floating-Point Operations Per Second), and frames per second (FPS).…”
Section: Methodsmentioning
confidence: 99%
“…To obtain richer multi-scale feature representations and improve the detection accuracy and speed of the algorithm, the SPPF module [ 26 ] integrates information from multi-scale local features. This module provides additional information from a wider range of spatial levels [ 27 ], giving the network a global perspective. The SPPF module only needs to specify a convolutional kernel, and each pooling operation’s output serves as the input for the next, speeding up data processing [ 28 ].…”
Section: Improved Yolov8 Networkmentioning
confidence: 99%
“…These changes provide more information and enhance the feature abstraction process. 15 Zhang et al integrate the inverse residual (IR) structure with the coordinate attention (CA) mechanism to construct a backbone network called CA Module for feature extraction. Additionally, they design a novel bidirectional weighted feature pyramid network (BWFPN) to improve the detection accuracy of the model.…”
Section: Introductionmentioning
confidence: 99%