基于轻量级深度神经网络的家禽疾病识别

Xiaodan Liu, Yinghua Zhou, Yuxiang Liu
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引用次数: 1

摘要

家禽养殖户在生产过程中经常受到家禽疾病的困扰,面临家禽疫病大规模传播的风险。准确、高效地识别家禽疾病是及时对症治疗和避免经济损失的必要前提。本文以MobileNetV3为骨干,建立了基于轻量级深度神经网络的家禽疾病识别模型,命名为PoultryNet。设计了特征融合结构,增强了模型的特征提取能力,使用SA模块增加了通道注意和空间注意。实验结果表明,本文提出的PoultryNet对家禽粪便图像的分类准确率为97.77%,比MobileNetV3、ShuffleNetV2、effentnet和GoogleNet模型分别提高1.12%、1.67%、1.27%和3.97%。与基础模型相比,PoultryNet的参数数量减少了0.33 m,证明了PoultryNet作为家禽疾病识别模型的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Poultry Disease Identification Based on Light Weight Deep Neural Networks
Poultry farmers are often plagued by poultry diseases during production and face the risk of large-scale spread of poultry epidemic diseases. Accurate and efficient identification of poultry diseases is a necessary prerequisite for timely symptomatic treatment and economic loss avoidance. In this paper, a poultry disease identification model based on a light weight deep neural network is established and named PoultryNet, which adopts MobileNetV3 as the backbone. A feature fusion structure is designed to enhance the feature extraction ability of the model, and a SA module is used to add channel attention and spatial attention. The experiment result shows that the classification accuracy of the proposed PoultryNet for poultry feces images is 97.77%, which is higher than that of MobileNetV3, ShuffleNetV2, EfficientNet, and GoogleNet models by 1.12%, 1.67%, 1.27%, and 3.97%, respectively. Compared with the base model, the amount of parameters of PoultryNet was reduced by 0.33 M. The effectiveness of PoultryNet, as a poultry disease identification model, is therefore proved.
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