基于多目标跟踪(MOT)算法的家禽运动检测及其行为分析

Jasmine Khairunissa, S. Wahjuni, I. Soesanto, W. Wulandari
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引用次数: 4

摘要

禽肉是印尼消费最多的畜产品之一。一些研究得出结论,了解家禽的行为将提高生产成本效率,并促进动物福利的实现。在这一日益增长的行业中,确保家禽的福利不是一件容易的事。采用多目标跟踪算法和单镜头多盒检测器算法训练的预训练目标检测模型,从帧率为15帧/秒的监控视频中提取家禽运动数据进行行为分析,准确率为60.4%。我们还设法获得了被检测物体的运动图和周期。本研究不关注物体相交的方向,使得物体之间可以交换身份。我们近期的研究是在数据准备步骤中添加对象身份标签,并使用不同的身份分配方法,这可能会提高算法的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detecting Poultry Movement for Poultry Behavioral Analysis using The Multi-Object Tracking (MOT) Algorithm
Poultry meat is one of the most consumed livestock products in Indonesia. Several studies have concluded that understanding the behavior of poultry will increase production cost efficiency as well as facilitate the fulfillment of animal welfare. Assuring the poultry’s welfare in this increasing business is not an easy task. Using the Multi-Object Tracking algorithm and a pre-trained object detection model trained by the Single Shot Multibox Detector algorithm, we extracted the poultry movement data from a surveillance video with a frame rate of 15 frames per second for behavioral analysis purposes with a precision value of 60.4%. We also managed to gain the object movement plots and periods of the detected objects. This research does not pay attention to the direction of intersecting objects which allows identities to be exchanged between objects. Our near-future research is to add an object identity label in the data preparation step and using a different method of identity assignment which might improve the performance of the algorithm.
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