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A YOLO-based Separation of Touching-Pigs for Smart Pig Farm Applications

机译:基于YOLO的智能猪场应用的触摸猪分离

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For specific livestock such as pigs in a pigsty, many surveillance applications have been reported to consider their health for efficient livestock management. For pig surveillance applications, separating touching-pigs in real-time is an important issue for a final goal of 24-hour tracking of individual pigs. Although convolutional neural network (CNN)-based instance segmentation techniques can be applied to this separation problem, their collective performance of accuracy-time may not satisfy the required performance. In this study, we improve the collective performance of accuracy-time by combining the fastest CNN-based object detection technique (i.e., You Only Look Once, YOLO) with image processing techniques. We first apply image processing techniques to detect touching-pigs by using both infrared and depth information acquired from an Intel RealSense camera, then apply YOLO to separate the touching-pigs. Especially, in using YOLO as an object detector, we consider the target object as the boundary region of the touching-pigs, rather than the individual pigs of the touching-pigs. Finally, we apply image processing techniques to determine the final boundary line from the YOLO output. Our experimental results show that this method is effective to separate touching-pigs in terms of the collective performance of accuracy-time, compared to the recently reported CNN-based instance segmentation technique.
机译:对于特定的牲畜,例如猪圈中的猪,据报道许多监视应用程序考虑了它们的健康状况,以进行有效的牲畜管理。对于猪的监视应用,实时分离触摸猪是24小时跟踪单个猪的最终目标的重要问题。尽管基于卷积神经网络(CNN)的实例分割技术可以应用于此分离问题,但是它们在准确度-时间上的集体表现可能无法满足所需的表现。在这项研究中,我们将最快的基于CNN的物体检测技术(即,You Only Look Once,YOLO)与图像处理技术相结合,提高了精确度-时间的总体性能。我们首先应用图像处理技术通过使用从英特尔实感摄像头获取的红外和深度信息来检测触摸猪,然后应用YOLO分离触摸猪。特别是,在使用YOLO作为对象检测器时,我们将目标对象视为猪的边界区域,而不是猪的各个猪。最后,我们应用图像处理技术从YOLO输出确定最终边界线。我们的实验结果表明,与最近报道的基于CNN的实例分割技术相比,该方法在准确时间的总体性能方面可有效分离触摸猪。

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