复杂环境下基于多维特征信息融合技术的羊群面部识别研究。

IF 2.6 2区 农林科学 Q1 VETERINARY SCIENCES
Frontiers in Veterinary Science Pub Date : 2025-03-13 eCollection Date: 2025-01-01 DOI:10.3389/fvets.2025.1404564
Fu Zhang, Xiaopeng Zhao, Shunqing Wang, Yubo Qiu, Sanling Fu, Yakun Zhang
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引用次数: 0

摘要

大规模农场的智能化管理需要对个体牲畜进行有效的监控。针对这一需求,设计了一种基于深度学习的三相智能监测系统,该系统集成了用于畜群盘点的多部分检测网络、用于面部身份识别的面部分类模型和用于健康评估的面部表情分析网络。针对多部分检测网络,采用多链路卷积融合块(multi-link convolution fusion block, MCFB)对YOLOv5s路径聚合网络进行了改进,增强了对不同大小物体的细粒度特征提取。为了提高对密集小目标的检测能力,在YOLOv5s头部中引入了可重新参数化卷积(RepConv)结构。在人脸身份识别方面,采用四层空间可分自注意机制(SSSA)代替GhostNet的第六阶段结构,加强关键特征的提取。此外,应用模型压缩技术对面部表情分析网络进行优化,提高效率。采用迁移学习策略进行权值预训练,并通过FPS、模型权值、平均精度(mAP)和测试集精度对训练效果进行评价。实验结果表明,增强后的多部分识别网络能够有效地从羊群的不同区域提取特征,平均检测准确率达到95.84%,mAP比YOLOv5s提高了2.55%。改进后的人脸分类网络的测试集准确率达到98.9%,比GhostNet高出3.1%。此外,面部表情分析网络的测试集准确率达到99.2%,比effentnet提高了3.6%。该系统结合了先进的特征提取和模型优化技术,显著提高了羊群监测的准确性和效率。面部分类和表情分析的改进进一步实现了实时健康监测,有助于智能牲畜管理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on herd sheep facial recognition based on multi-dimensional feature information fusion technology in complex environment.

Intelligent management of large-scale farms necessitates efficient monitoring of individual livestock. To address this need, a three-phase intelligent monitoring system based on deep learning was designed, integrating a multi-part detection network for flock inventory counting, a facial classification model for facial identity recognition, and a facial expression analysis network for health assessment. For multi-part detection network, The YOLOv5s path aggregation network was modified by incorporating a multi-link convolution fusion block (MCFB) to enhance fine-grained feature extraction across objects of different sizes. To improve the detection of dense small targets, a Re-Parameterizable Convolution (RepConv) structure was introduced into the YOLOv5s head. For facial identity recognition, the sixth-stage structure in GhostNet was replaced with a four-layer spatially separable self-attention mechanism (SSSA) to strengthen key feature extraction. Additionally, model compression techniques were applied to optimize the facial expression analysis network for improved efficiency. A transfer learning strategy was employed for weight pre-training, and performance was evaluated using FPS, model weight, mean average precision (mAP), and test set accuracy. Experimental results demonstrated that the enhanced multi-part identification network effectively extracted features from different regions of the sheep flock, achieving an average detection accuracy of 95.84%, with a 2.55% improvement in mAP compared to YOLOv5s. The improved facial classification network achieved a test set accuracy of 98.9%, surpassing GhostNet by 3.1%. Additionally, the facial expression analysis network attained a test set accuracy of 99.2%, representing a 3.6% increase compared to EfficientNet. The proposed system significantly enhances the accuracy and efficiency of sheep flock monitoring by integrating advanced feature extraction and model optimization techniques. The improvements in facial classification and expression analysis further enable real-time health monitoring, contributing to intelligent livestock management.

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来源期刊
Frontiers in Veterinary Science
Frontiers in Veterinary Science Veterinary-General Veterinary
CiteScore
4.80
自引率
9.40%
发文量
1870
审稿时长
14 weeks
期刊介绍: Frontiers in Veterinary Science is a global, peer-reviewed, Open Access journal that bridges animal and human health, brings a comparative approach to medical and surgical challenges, and advances innovative biotechnology and therapy. Veterinary research today is interdisciplinary, collaborative, and socially relevant, transforming how we understand and investigate animal health and disease. Fundamental research in emerging infectious diseases, predictive genomics, stem cell therapy, and translational modelling is grounded within the integrative social context of public and environmental health, wildlife conservation, novel biomarkers, societal well-being, and cutting-edge clinical practice and specialization. Frontiers in Veterinary Science brings a 21st-century approach—networked, collaborative, and Open Access—to communicate this progress and innovation to both the specialist and to the wider audience of readers in the field. Frontiers in Veterinary Science publishes articles on outstanding discoveries across a wide spectrum of translational, foundational, and clinical research. The journal''s mission is to bring all relevant veterinary sciences together on a single platform with the goal of improving animal and human health.
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