基于深度学习的精度与执行时间平衡的重叠猪分离

Hanhaesol Lee, J. Sa, Yongwha Chung, Daihee Park, Hakjae Kim
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引用次数: 1

摘要

养猪场的拥挤环境极易导致口蹄疫等传染病的传播,因此通过使用俯视图摄像机的视频监控系统,自动分析了拥挤养猪场中猪的行为。虽然需要正确地分离重叠猪以跟踪每头猪,但由于X形和T形等复杂的遮挡模式,快速准确地提取每头猪的边界是一个具有挑战性的问题。在本研究中,我们不仅利用了YOLO的优点(即基于深度学习的快速目标检测器之一),而且通过旋转的测试时间数据增强克服了YOLO的缺点(即基于轴向边界盒的目标检测器),提出了一种快速准确的重叠猪分离方法。基于重叠猪之间遮挡模式的实验结果表明,所提出的方法可以提供更好的精度和更快的处理速度,而不是最先进的基于深度学习的分割技术之一,如Mask R-CNN(即,在精度/处理速度性能指标方面,性能比Mask R-CNN提高了约11倍)。
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Deep Learning-based Overlapping-Pig Separation by Balancing Accuracy and Execution Time
The crowded environment of a pig farm is highly vulnerable to the spread of infectious diseases such as foot-andmouth disease, and studies have been conducted to automatically analyze behavior of pigs in a crowded pig farm through a video surveillance system using a top-view camera. Although it is required to correctly separate overlapping-pigs for tracking each individual pigs, extracting the boundaries of each pig fast and accurately is a challenging issue due to the complicated occlusion patterns such as X shape and T shape. In this study, we propose a fast and accurate method to separate overlapping-pigs not only by exploiting the advantage (i.e., one of the fast deep learning-based object detectors) of You Only Look Once, YOLO, but also by overcoming the disadvantage (i.e., the axis aligned bounding box-based object detector) of YOLO with the test-time data augmentation of rotation. Experimental results with the occlusion patterns between the overlapping-pigs show that the proposed method can provide better accuracy and faster processing speed than one of the state-of-the-art deep learningbased segmentation techniques such as Mask R-CNN (i.e., the performance improvement over Mask R-CNN was about 11 times, in terms of the accuracy/processing speed performance metrics).
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