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首页> 外文期刊>Biosystems Engineering >Foreground detection of group-housed pigs based on the combination of Mixture of Gaussians using prediction mechanism and threshold segmentation
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Foreground detection of group-housed pigs based on the combination of Mixture of Gaussians using prediction mechanism and threshold segmentation

机译:基于高斯混合的预测机制和阈值分割的组合猪群前景检测

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摘要

In this paper, a foreground detection method to obtain the foreground objects of pigs in overhead views of group-housed environments is proposed. The method is based on the combination of Mixture of Gaussians (MoG) using prediction mechanism (PM) and threshold segmentation algorithm. First, the "valid region" is manually set according to a priori knowledge. Second, the foreground objects of pigs are detected using the PM-MoG algorithm. The algorithm uses the detected binary image of the previous frame to predict the current frame in the valid region for pixels that fulfil background updating conditions. Different update strategies are used to update the background for different circumstances. Third, the maximum entropy threshold segmentation algorithm is used according to the colour information of foreground objects. Finally, the results of the two previous steps of foreground detection are fused. The experimental results show that the method is effective and can extract relatively complete foreground objects of pigs in complex scenes. These complex scenes include light changes, the influence of ground urine stains, water stains, manure, and other sundries, pigs slow movement patterns, and varying colours of foreground objects. The average foreground detection rate is approximately 92%. The experimental results set the foundation for further exploration of individual identification of group-housed pigs, their behaviour analysis, and other objectives
机译:提出了一种在群居环境俯视图中获取猪的前景物体的前景检测方法。该方法基于使用预测机制(PM)的高斯混合(MoG)和阈值分割算法的组合。首先,根据先验知识手动设置“有效区域”。其次,使用PM-MoG算法检测猪的前景物体。该算法使用检测到的前一帧的二进制图像来预测满足背景更新条件的像素在有效区域中的当前帧。针对不同情况,使用了不同的更新策略来更新背景。第三,根据前景物体的颜色信息,采用最大熵阈值分割算法。最后,将前景检测的前两个步骤的结果融合在一起。实验结果表明,该方法是有效的,可以提取复杂场景中相对完整的猪的前景物体。这些复杂的场景包括光线变化,地面尿渍,水渍,粪便和其他杂物的影响,猪的缓慢运动模式以及前景物体的颜色变化。平均前景检测率约为92%。实验结果为进一步探究群养猪的个体识别,行为分析和其他目标奠定了基础。

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