Bootstrapping Labelled Dataset Construction for Cow Tracking and Behavior Analysis

Aram Ter-Sarkisov, R. Ross, John D. Kelleher
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引用次数: 8

Abstract

This paper introduces a new approach to the long-term tracking of an object in a challenging environment. The object is a cow and the environment is an enclosure in a cowshed. Some of the key challenges in this domain are a cluttered background, low contrast and high similarity between moving objects – which greatly reduces the efficiency of most existing approaches, including those based on background subtraction. Our approach is split into object localization, instance segmentation, learning and tracking stages. Our solution is benchmarked against a range of semi-supervised object tracking algorithms and we show that the performance is strong and well suited to subsequent analysis. We present our solution as a first step towards broader tracking and behavior monitoring for cows in precision agriculture with the ultimate objective of early detection of lameness.
用于奶牛跟踪和行为分析的自举标记数据集构建
本文介绍了一种在复杂环境下对目标进行长期跟踪的新方法。对象是一头牛,环境是牛棚中的围栏。该领域的一些关键挑战是背景混乱,运动物体之间的低对比度和高相似性,这大大降低了大多数现有方法的效率,包括基于背景减法的方法。我们的方法分为对象定位、实例分割、学习和跟踪四个阶段。我们的解决方案针对一系列半监督对象跟踪算法进行了基准测试,我们表明性能很强,非常适合后续分析。我们提出了我们的解决方案,作为在精准农业中对奶牛进行更广泛的跟踪和行为监测的第一步,最终目标是早期发现跛行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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