使用基于颜色的运动跟踪自动行为表型检测和分析

A. Shimoide, Ilmi Yoon, M. Fuse, Holly C. Beale, Rahul Singh
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引用次数: 1

摘要

阐明基因的功能意义是现代科学的一个关键挑战。解决这个问题可以导致从药物发现到农业科学等多个领域的根本性进步。在这种情况下,一种常用的方法涉及研究遗传对模式生物的影响。这些影响可以在行为、形态、解剖或分子水平上表达,表达的模式称为表型。不幸的是,对许多表型的详细研究,如生物体的行为,由于表型模式的固有复杂性和它可能在很长一段时间内进化的事实,是高度复杂的。在本文中,我们建议应用基于颜色的跟踪来研究角虫的蜕皮,这是一种生物学上高度相关的表型,其复杂性迄今为止阻碍了自动化方法的应用。我们提出的实验结果表明,在复杂的身体运动,部分闭塞和身体变形的条件下,跟踪和表型测定的准确性。我们论文的另一个关键目标是向计算机视觉社区展示这种新颖的应用,其中视觉和模式分析技术可以对现代科学的其他分支产生开创性的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated behavioral phenotype detection and analysis using color-based motion tracking
The problem of elucidating the functional significance of genes is a key challenge of modern science. Solving this problem can lead to fundamental advancements across multiple areas such starting from pharmaceutical drug discovery to agricultural sciences. A commonly used approach in this context involves studying genetic influence on model organisms. These influences can be expressed at behavioral, morphological, anatomical, or molecular levels and the expressed patterns are called phenotypes. Unfortunately, detailed studies of many phenotypes, such as the behavior of an organism, is highly complicated due to the inherent complexity of the phenotype pattern and because of the fact that it may evolve over long time periods. In this paper, we propose applying color-based tracking to study Ecdysis in the hornworm - a biologically highly relevant phenotype whose complexity had thus far, prevented application of automated approaches. We present experimental results which demonstrate the accuracy of tracking and phenotype determination under conditions of complex body movement, partial occlusions, and body deformations. A key additional goal of our paper is to expose the computer vision community to such novel applications, where techniques from vision and pattern analysis can have a seminal influence on other branches of modern science.
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