The Posture Recognition of Pigs Based on Zernike Moments and Support Vector Machines

Weixing Zhu, Yan Zhu, Xin-cheng Li, Dengting Yuan
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引用次数: 3

Abstract

Walking postures of pigs usually reflect their health condition. When a pig lowers its head or walks very slowly for a long time, it is probably in bad health. And a pig walking quickly with its head up may mean it is irritated or frightened. These behaviours traditionally rely on manual observation. With the development of computer technology and digital image processing, machine vision gradually penetrated into various fields of agriculture production. In order to better monitor the behaviour of pigs, a new posture recognition method based on Zernike moments and support vector machines is proposed. First, the Otsu adaptive threshold segmentation is used to obtain the binary image. Then the contour of pigs is extracted by canny edge detection and morphological algorithms. Second, the Zernike moment feature parameters are extracted from the normalized binary contour images. Based on the above, the posture classifiers are designed according to support vector machine theory to recognize four kinds of behaviour postures of pigs, including walking normally, walking with head up, walking with head down, and lying. The experimental results show that the combination of Zernike moments and support vector machine makes the extracted features more sufficient and effective. And the posture classification accuracy of pigs reaches 95%.
基于Zernike矩和支持向量机的猪姿态识别
猪的走路姿势通常反映了它们的健康状况。当一头猪长时间低下头或走得很慢时,它可能身体不好。而猪抬起头走得很快可能意味着它被激怒或害怕了。这些行为传统上依赖于人工观察。随着计算机技术和数字图像处理技术的发展,机器视觉逐渐渗透到农业生产的各个领域。为了更好地监测猪的行为,提出了一种基于泽尼克矩和支持向量机的姿态识别方法。首先,采用Otsu自适应阈值分割得到二值图像;然后利用精细的边缘检测和形态学算法提取猪的轮廓;其次,从归一化二值轮廓图像中提取泽尼克矩特征参数;在此基础上,根据支持向量机理论设计姿态分类器,对猪正常行走、抬头行走、低头行走和躺着四种行为姿态进行识别。实验结果表明,将泽尼克矩与支持向量机相结合可以使提取的特征更加充分和有效。猪的姿态分类准确率达到95%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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