基于机器视觉的猪呼吸检测

Zhu Weixing, Wu Zhilei
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引用次数: 9

摘要

提出了一种通过检测猪呼吸来实时识别猪健康状况的机器视觉方法。通过构建视频图像采集系统,提取猪俯视图图像,并对图像进行预处理,得到猪的轮廓。采用凹凸识别法确定腰腹线一侧的腰角和肩胛骨端点。采用改进的链码算法测量两点之间的直线长度。记录长度分布数据绘制时间-位置图,目标曲线的波动近似反映了帧序列中猪的呼吸。所以呼吸频率可以表示为曲线的频率。与人工观测结果相比,本文测量呼吸频率的相对误差约为6.05%。因此,基于机器视觉的猪呼吸检测方法是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of porcine respiration based on machine vision
A machine vision method is presented to identify porcine health in real-time by detecting porcine breath. Porcine images in top view are extracted by constructing video image acquisition system, and porcine contour is obtained by serious of image pretreatment. Concave-convex recognition method is used to determine the waist corner and scapular endpoint on one side of ventral lines. The length of the line between two points is measured using improved chain code algorithm. The data of length distribution are recorded to draw time-position figure, and the fluctuation of the target curve approximately reflects the porcine breath in frame sequences. So the breath rate could be expressed as the frequency of the curve. Compared with manual observation, the relative error of the result in this paper is about 6.05% in detecting respiratory rate. Therefore, machine vision-based method is effective for detecting porcine breath.
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