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母牛发情精准感知与智能鉴定技术研究进展、问题与挑战

张志勇1,2, 曹姗姗2, 孔繁涛3, 刘继芳2, 孙伟2()   

  1. 1. 新疆农业大学 计算机与信息工程学院,新疆 乌鲁木齐 830052,中国
    2. 中国农业科学院 农业信息研究所,北京 100081,中国
    3. 中国农业科学院 农业经济与发展研究所,北京 100081,中国
  • 收稿日期:2024-05-13 出版日期:2025-01-08
  • 基金项目:
    吉林省重点研发项目(20240303079NC)
  • 作者简介:

    张志勇,研究方向为精准畜牧与智慧养殖,E-mail:

    ZHANG Zhiyong, E-mail:

  • 通信作者:
    孙 伟,博士,研究员,研究方向为时空信息分析、智慧畜牧。E-mail:

Advances, Problems and Challenges of Precise Estrus Perception and Intelligent Identification Technology for Cows

ZHANG Zhiyong1,2, CAO Shanshan2, KONG Fantao3, LIU Jifang2, SUN Wei2()   

  1. 1. Computer and Information Engineering Institute, Xinjiang Agricultural University, Urumqi 830052, China
    2. Agricultural Information Institute, Chinese Academy of Agricultural Sciences, Beijing 100081, China
    3. Institute of Agricultural Economics and Development, Chinese Academy of Agricultural Sciences, Beijing 100081, China
  • Received:2024-05-13 Online:2025-01-08
  • Foundation items:Key Research and Development Projects of Jilin Province(20240303079NC)
  • Corresponding author:
    SUN Wei, E-mail:

摘要:

【目的/意义】 母牛发情监测与鉴定是牧场养殖繁育管理的重要内容,直接决定了牛群发情率等繁殖力指标统计的客观性与可靠性,对持续改进饲养管理方法、提升牛场管理水平、提高牛群数量和质量等工作至关重要。文章旨在为肉牛/奶牛养殖业的科学管理和现代化生产新技术研究提供参考,亦为中国精准畜牧智慧养殖关键技术研发提供理论方法借鉴。 【进展】 在阐述母牛正常发情与异常发情典型特征的基础上,以发情期生理体征和行为特征关键参数监测与诊断为主线,从基于单因子信息处理和多因子信息融合的技术方法视角,系统性分类总结了物联网、大数据和人工智能等新一代信息技术驱动下的母牛发情监测与鉴定技术的研究进展、发展脉络和方法路径。 【结论/展望】 从系统实用性、稳定性和环境适应性,以及设备成本效益、操作简便性等综合多方面因素的角度,探讨了数字畜牧业高质量发展背景下进一步深化研究母牛发情精准感知与智能鉴定技术亟待解决的若干关键问题,包括提高弱发情条件下监测精准性、突破复杂背景噪声中的音频提取与声纹构建技术难题、提升计算机视觉监测技术的适应能力,以及构建多模态信息融合的综合监测鉴定模型等问题,并针对性论述了上述系列问题对当前技术研究带来的诸多挑战。

关键词: 母牛发情, 发情监测, 发情鉴定, 生理体征, 行为模式, 智慧育种

Abstract:

[Significance] Estrus monitoring and identification in cows is a crucial aspect of breeding management in beef and dairy cattle farming. Innovations in precise sensing and intelligent identification methods and technologies for estrus in cows are essential not only for scientific breeding, precise management, and smart breeding on a population level but also play a key supportive role in health management, productivity enhancement, and animal welfare improvement at the individual level. The aims are to provide a reference for scientific management and the study of modern production technologies in the beef and dairy cattle industry, as well as theoretical methodologies for the research and development of key technologies in precision livestock farming in China. [Progress] Based on describing the typical characteristics of normal and abnormal estrus in cows, this paper systematically categorizes and summarizes the recent research progress, development trends, and methodological approaches in estrus monitoring and identification technologies, focusing on the monitoring and diagnosis of key physiological signs and behavioral characteristics during the estrus period. Firstly, it outlines the digital monitoring technologies for three critical physiological parameters—body temperature, rumination, and activity levels—and their applications in cow estrus monitoring and identification. It analyzes the intrinsic reasons for performance bottlenecks in estrus monitoring models based on body temperature, compares the reliability issues faced by activity-based estrus monitoring, and addresses the difficulties in balancing model generalization and robustness design. Secondly, it examines the estrus sensing and identification technologies based on three typical behaviors: feeding, vocalization, and sexual desire. It highlights the latest applications of new artificial intelligence technologies, such as computer vision and deep learning, in estrus monitoring and points out the critical role of these technologies in improving the accuracy and timeliness of monitoring. Finally, it focuses on multi-factor fusion technologies for estrus perception and identification, summarizing how different researchers combine various physiological and behavioral parameters using diverse monitoring devices and algorithms to enhance accuracy in estrus monitoring. It emphasizes that multi-factor fusion methods can improve detection rates and the precision of identification results, being more reliable and applicable than single-factor methods. The importance and potential of multi-modal information fusion in enhancing monitoring accuracy and adaptability are underlined. The current shortcomings of multi-factor information fusion methods are analyzed, such as the potential impact on animal welfare from parameter acquisition methods, the singularity of model algorithms used for representing multi-factor information fusion, and inadequacies in research on multi-factor feature extraction models and estrus identification decision algorithms. [Conclusions and Prospects] From the perspectives of system practicality, stability, environmental adaptability, cost-effectiveness, and ease of operation, several key issues are discussed that need to be addressed in the further research of precise sensing and intelligent identification technologies for cow estrus within the context of high-quality development in digital livestock farming. These include improving monitoring accuracy under weak estrus conditions, overcoming technical challenges of audio extraction and voiceprint construction amidst complex background noise, enhancing the adaptability of computer vision monitoring technologies, and establishing comprehensive monitoring and identification models through multi-modal information fusion. It specifically discusses the numerous challenges posed by these issues to current technological research and explains that future research needs to focus not only on improving the timeliness and accuracy of monitoring technologies but also on balancing system cost-effectiveness and ease of use to achieve a transition from the concept of smart farming to its practical implementation.

Key words: cow's estrus, estrus monitoring, estrus identification, physical symptoms, behavior pattern, smart breeding

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