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http://umt-ir.umt.edu.my:8080/handle/123456789/22412
Title: | Enhanced YOLOv7 for Improved Underwater Target Detection |
Authors: | Daohua Lu Junxin Yi Jia Wang |
Keywords: | Underwater target detection YOLO7 Loss function Attention mechanism |
Issue Date: | 2024 |
Publisher: | MDPI |
Abstract: | Aiming at the problems of the underwater existence of some targets with relatively small size, low contrast, and a lot of surrounding interference information, which lead to a high leakage rate and low recognition accuracy, a new improved YOLOv7 underwater target detection algorithm is proposed. First, the original YOLOv7 anchor frame information is updated by the K-Means algorithm to generate anchor frame sizes and ratios suitable for the underwater target dataset; second, we use the PConv (Partial Convolution) module instead of part of the standard convolution in the multi-scale feature fusion module to reduce the amount of computation and number of parameters, thus improving the detection speed; then, the existing CIou loss function is improved with the ShapeIou_NWD loss function, and the new loss function allows the model to learn more feature information during the training process; finall, we introduce the SimAM attention mechanism after the multi-scale feature fusion module to increase attention to the small feature information, which improves the detection accuracy. This method achieves an average accuracy of 85.7% on the marine organisms dataset, and the detection speed reaches 122.9 frames/s, which reduces the number of parameters by 21% and the amount of computation by 26% compared with the original YOLOv7 algorithm. The experimental results show that the improved algorithm has a great improvement in detection speed and accuracy. |
URI: | http://umt-ir.umt.edu.my:8080/handle/123456789/22412 |
Appears in Collections: | UMT Niche E-Book |
Files in This Item:
File | Description | Size | Format | |
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Enhanced YOLOv7 for Improved Underwater.pdf Restricted Access | 5.04 MB | Adobe PDF | View/Open Request a copy |
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