引用本文
  •    [点击复制]
  •    [点击复制]
【打印本页】 【下载PDF全文】 查看/发表评论下载PDF阅读器关闭

←前一篇|后一篇→

过刊浏览    高级检索

本文已被:浏览 1088次   下载 803 本文二维码信息
码上扫一扫!
立体栖架散养蛋鸡行为加速度信号降噪方法比较分析
胡乾1,聂路玮1,王朝元1,2,3*
0
(1.中国农业大学 水利与土木工程学院, 北京 100083;2.农业农村部设施农业工程重点实验室, 北京100083;3.北京市畜禽健康养殖环境工程技术研究中心, 北京 100083)
摘要:
针对采用姿态传感器监测散养蛋鸡行为过程中存在加速度信号易受噪声干扰,不同行为加速度信号特征尚不清晰的问题,以立体栖架散养蛋鸡的三维空间行为为目标,在构建蛋鸡穿戴式行为监测系统,获取不同行为加速度信号的基础上,研究小波阈值、CEEMDAN、CEEMDAN结合小波阈值对加速度信号的降噪效果,分析蛋鸡6种典型行为活动的加速度信号特征。结果表明:1)小波史坦无偏似然估计(Rigrsure)阈值的降噪效果更好,降噪后信号的信噪比(SNR)为17.613 2,均方根误差(RMSE)为0.045 0;2)根据XY轴加速度标准差分布特征,可将蛋鸡三维空间行为活动强度由低到高分为趴卧和站立、采食和饮水、行走、跳跃4类,各类行为活动的加速度信号标准差差异极显著(P<0.001)。本研究表明,小波Rigrsure阈值法在对蛋鸡空间行为活动加速度信号进行降噪的同时可以保留更多的有效信息,可根据加速度标准差对蛋鸡典型行为的活动水平进行分类识别。
关键词:  立体栖架  蛋鸡行为  加速度信号  小波阈值  行为分类
DOI:10.11841/j.issn.1007-4333.2022.09.19
投稿时间:2021-12-22
基金项目:科技创新2030-“新一代人工智能”重大项目课题(2021ZD0113801)
Comparison of the denoising methods for the acceleration signals collected by laying hens' behaviors monitoring equipment inside a 3D aviary system
HU Qian1,NIE Luwei1,WANG Chaoyuan1,2,3*
(1.College of Water Resources and Civil Engineering, China Agricultural University, Beijing 100083, China;2.Key Laboratory of Agricultural Engineering in Structure and Environment of Ministry of Agriculture and Rural Affairs, Beijing 100083, China;3.Beijing Engineering Research Center for Livestock and Poultry Healthy Environment, Beijing 100083, China)
Abstract:
Acceleration signals generated from wearable behavior monitoring systems are susceptible to noise interference. Moreover, the distribution characteristic of acceleration signals of various behaviors is not yet clear, which significantly restricts automatic behavior recognition. In this study, a wearable behavior monitoring system was constructed to collect behavioral acceleration signals of the laying hens inside the 3D space of an aviary system. The performances of three denoising methods on accelerations were compared, including wavelet threshold, CEEMDAN and CEEMDAN combined with wavelet threshold. Moreover, the acceleration signal characteristic of six typical behaviors of laying hens was analyzed. Results showed that: 1)Wavelet Stein's unbiased risk estimation(Rigrsure)threshold had better denoising performance. The signal to noise ratio(SNR)and root mean square error(RMSE)of the denoising signals were 17. 613 2 and 0. 045 0, respectively. 2)According to the distributions of standard deviation of X- and Y-axis accelerations, the activity levels were divided into four categories from low to high level, i. e. , lying and standing, eating and drinking, walking, jumping. The standard deviations of acceleration signals of various behavioral activities were significantly significant(P<0. 001). This study indicated that the wavelet Rigrsure threshold method could retain more effective information while reducing noises, and the activity levels of typical behaviors of laying hens could be classified according to the standard deviation of acceleration.
Key words:  aviary system  laying hens' behaviors  acceleration signals  wavelet threshold  behavior classification