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Smart Agriculture ›› 2023, Vol. 5 ›› Issue (1): 52-65.doi: 10.12133/j.smartag.SA202205009

• 综合研究 • 上一篇    下一篇

深度学习在家畜智慧养殖中研究应用进展

郭阳阳1(), 杜书增2, 乔永亮3(), 梁栋1   

  1. 1.安徽大学 互联网学院,安徽 合肥 230039
    2.南阳农业职业学院,河南 南阳,473000
    3.悉尼大学 工学院,悉尼 NSW2006,澳大利亚
  • 收稿日期:2022-05-28 出版日期:2023-03-30
  • 基金资助:
    国家自然基金项目(62273001)
  • 作者简介:郭阳阳,博士,讲师,研究方向为智能化监测与技术、机器视觉技术在畜禽信息化领域中的应用。E-mail:guoyangyang113529@ahu.edu.cn
  • 通信作者: 乔永亮,博士,副研究员,研究方向为农业机器人、智慧畜牧业、智能感知。E-mail:yongliang.qiao@outlook.com

Advances in the Applications of Deep Learning Technology for Livestock Smart Farming

GUO Yangyang1(), DU Shuzeng2, QIAO Yongliang3(), LIANG Dong1   

  1. 1.School of Internet, Anhui University, Hefei 230039, China
    2.Nanyang Vocational College of Agriculture, Nanyang 473000, China
    3.Faculty of Engineering, The University of Sydney, Sydney NSW 2006, Australia
  • Received:2022-05-28 Online:2023-03-30

摘要:

准确高效地监测动物信息,及时分析动物的生理与身体健康状况,并结合智能化技术进行自动饲喂和养殖管理,对于家畜规模化养殖意义重大。深度学习技术由于具有自动特征提取和强大图像表示能力,更适用于复杂的畜牧养殖环境中动物信息监测。为进一步分析人工智能技术在当下智慧畜牧业中研究应用,本文针对牛、羊和猪三种家畜,介绍了深度学习技术在目标检测识别、体况评价与体重估计以及行为识别与量化分析的研究现状。其中,目标检测识别有利于构建动物个体电子档案,在此基础上可以关联动物的体况体重信息、行为信息以及健康情况等,这也是智慧畜牧业发展的趋势。智慧畜牧养殖技术当前面临着应用场景存在多视角、多尺度、多场景和少样本等挑战以及智能技术泛化应用的问题,本文结合畜牧业实际饲养和管理需求,对智慧畜牧业发展进行展望并提出了:结合半监督或者少样本学习来提高深度学习模型的泛化能力;人、装备和养殖动物这三者的统一协作及和谐发展;大数据、深度学习技术与畜牧养殖的深度融合等发展建议,以期进一步推动畜牧养殖智能化发展。

关键词: 智慧畜牧, 精准养殖, 个体识别, 信息感知, 行为识别, 深度学习

Abstract:

Accurate and efficient monitoring of animal information, timely analysis of animal physiological and physical health conditions, and automatic feeding and farming management combined with intelligent technologies are of great significance for large-scale livestock farming. Deep learning techniques, with automatic feature extraction and powerful image representation capabilities, solve many visual challenges, and are more suitable for application in monitoring animal information in complex livestock farming environments. In order to further analyze the research and application of artificial intelligence technology in intelligent animal farming, this paper presents the current state of research on deep learning techniques for tag detection recognition, body condition evaluation and weight estimation, and behavior recognition and quantitative analysis for cattle, sheep and pigs. Among them, target detection and recognition is conducive to the construction of electronic archives of individual animals, on which basis the body condition and weight information, behavior information and health status of animals can be related, which is also the trend of intelligent animal farming. At present, intelligent animal farming still faces many problems and challenges, such as the existence of multiple perspectives, multi-scale, multiple scenarios and even small sample size of a certain behavior in data samples, which greatly increases the detection difficulty and the generalization of intelligent technology application. In addition, animal breeding and animal habits are a long-term process. How to accurately monitor the animal health information in real time and effectively feed it back to the producer is also a technical difficulty. According to the actual feeding and management needs of animal farming, the development of intelligent animal farming is prospected and put forward. First, enrich the samples and build a multi perspective dataset, and combine semi supervised or small sample learning methods to improve the generalization ability of in-depth learning models, so as to realize the perception and analysis of the animal's physical environment. Secondly, the unified cooperation and harmonious development of human, intelligent equipment and breeding animals will improve the breeding efficiency and management level as a whole. Third, the deep integration of big data, deep learning technology and animal farming will greatly promote the development of intelligent animal farming. Last, research on the interpretability and security of artificial intelligence technology represented by deep learning model in the breeding field. And other development suggestions to further promote intelligent animal farming. Aiming at the progress of research application of deep learning in livestock smart farming, it provides reference for the modernization and intelligent development of livestock farming.

Key words: livestock husbandry, intelligent farming, individual identification, information perception, behavior recognition, deep learning

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