湖北农业科学 ›› 2026, Vol. 65 ›› Issue (3): 163-170.doi: 10.14088/j.cnki.issn0439-8114.2026.03.026

• 畜牧·兽医 • 上一篇    下一篇

结合高效通道与全局注意力机制的肉鸡异常声音识别

宁仲亿, 张仁龙   

  1. 北京农学院智能科学与工程学院,北京 100096
  • 收稿日期:2025-11-14 出版日期:2026-03-25 发布日期:2026-04-09
  • 作者简介:宁仲亿(2002-),男,山东泰安人,在读硕士研究生,研究方向为家禽健康监测,(电话)15318138952(电子信箱)ningzhongyi@bua.edu.cn。

Abnormal sound recognition of broiler chickens combining efficient channel attention and global attention mechanism

NING Zhong-yi, ZHANG Ren-long   

  1. College of Intelligent Science and Engineering, Beijing University of Agriculture, Beijing 100096, China
  • Received:2025-11-14 Published:2026-03-25 Online:2026-04-09

摘要: 为探究肉鸡在鸡舍内不同健康状态下发出的声音,实现肉鸡健康状态无接触、自动化的识别与监测,并提升禽类养殖智能化水平和禽类福祉,针对呼吸道疾病导致的声学特征畸变问题,通过结合高效通道注意力机制(ECA)与全局注意力机制(GAM)实现“通道-空间级联增强”的轻量级肉鸡健康声音识别模型(MobileNetV3-ECA-GAM),强化病理声学捕获能力,对肉鸡在鸡舍内不同健康状态下发出声音进行识别,并对比其他模型的性能与效率。以选取1日龄、公母混养蛋肉鸡100只,分为2组,采集健康组和疾病治疗组肉鸡在受控环境下定时音频数据,并通过音频裁剪、谱减法去噪及梅尔频谱图转换进行数据预处理。结果表明,MobileNetV3-ECA-GAM模型在肉鸡异常声音识别任务中表现出色,准确率达到96.75%,验证了ECA与GAM对提升模型性能及高效率、泛化能力的有效性,说明MobileNetV3-ECA-GAM模型能够适用于肉鸡声音无接触异常监测,为禽类养殖提供一定的理论基础和技术支撑。

关键词: 肉鸡声音, 非接触式监测, 梅尔频谱图, MobileNetV3, ECA, GAM

Abstract: To investigate the vocalizations of broilers under different health conditions in poultry houses, and achieve non-contact, automated identification and monitoring of broiler health status, thereby enhancing the intelligence of poultry farming and improving animal welfare. Addressing the issue of acoustic feature distortion caused by respiratory diseases, a lightweight broiler health sound recognition model(MobileNetV3-ECA-GAM)that integrated efficient channel attention (ECA) and global attention mechanism (GAM) to realize “channel-spatial cascade enhancement” was proposed. This design strengthened the model’s capacity to capture pathological acoustic features. In the experiment, 100 one-day-old mixed-sex broilers were divided into two groups. The primary respiratory disease of interest was infectious bronchitis, a common condition in broilers. Controlled-environment audio data were collected at scheduled intervals from both healthy and diseased (treated) groups. Preprocessing steps included audio segmentation, spectral subtraction for noise reduction, and conversion to Mel-spectrograms. Results demonstrated that the MobileNetV3-ECA-GAM model achieved an outstanding 96.75% accuracy in broiler abnormal sound recognition tasks, validating the effectiveness of ECA and GAM in enhancing model performance, efficiency, and generalization. These findings indicated that the proposed model was well-suited for non-contact abnormal sound monitoring in broilers, providing both theoretical and technical support for intelligent poultry farming.

Key words: broiler vocalization, non-contact monitoring, Mel-spectrogram, MobileNetV3, ECA, GAM

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