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A Dynamic Pig Face Detection Method Based on Spatial Channel Weight Optimization Attention Mechanism and Adaptive Anchor Point Selection
Journal article   Peer reviewed

A Dynamic Pig Face Detection Method Based on Spatial Channel Weight Optimization Attention Mechanism and Adaptive Anchor Point Selection

Shuiqing Xu, Wentao Zhang, Songbing Tao, Yi Chai, Parisa A. Bahri and Hai Wang
IEEE transactions on instrumentation and measurement, Vol.74, pp.1-13
2025

Abstract

Accuracy Anchor point selection attention mechanism Detectors dynamic training Face detection Face recognition Feature extraction Finite element analysis Object detection pig face detection Proposals Shape Training
Pig face detection plays a crucial role in the field of agricultural farming, especially in precise feeding and disease monitoring. This study proposes a method called adaptive region-based convolutional neural network (A-RCNN) for multiangled dirty pig face detection in outdoor environments. First, in order to address the interference caused by dirty cleaning surfaces, a feature enhancement module (FEM) is designed to improve the network's classification ability. Second, in order to ensure that the anchor points are more in line with the shape of the pig surface, an anchor point selection module (APSM) is introduced to generate high-quality area recommendations. Finally, in response to the interference problem of complex outdoor backgrounds, this article adopts a dynamic training strategy (DTS) to optimize the final detection results using these high-quality region suggestions. This study conducted an in-depth exploration of the publicly available JD dataset, and the experimental results showed that compared with existing methods, this method demonstrated excellent performance, achieving 56.3% mean average precision (mAP) and an improvement of 6.02% compared to the baseline Faster RCNN. In addition, to verify the practical application effect of the model, this article also deployed it on the edge device Raspberry Pi 4B, further confirming the effectiveness and practicality of the model.

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Collaboration types
Domestic collaboration
International collaboration
Citation topics
4 Electrical Engineering, Electronics & Computer Science
4.17 Computer Vision & Graphics
4.17.128 Deep Visual Recognition
Web Of Science research areas
Engineering, Electrical & Electronic
Instruments & Instrumentation
ESI research areas
Engineering
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