水下观测视频中动物的检测、跟踪和分类

D. Edgington, D. Cline, J. Mariette, I. Kerkez
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引用次数: 2

摘要

对于海洋学研究,远程操作的水下航行器(rov)和水下观测站每天都会记录几个小时的视频材料。人工处理如此大量的视频已经成为基于这些数据进行科学研究的主要瓶颈。我们开发了一个自动化系统,可以检测、跟踪和分类人类视频注释者可能感兴趣的对象。采用选择性注意算法预先选择显著目标进行跟踪起始,降低了多目标跟踪的复杂度。然后,如果对象被跟踪了几帧,则创建一个视觉事件,并利用高斯混合模型将其传递给贝叶斯分类器,以确定检测到的事件的对象类别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detecting, Tracking and Classifying Animals in Underwater Observatory Video
For oceanographic research, remotely operated underwater vehicles (ROVs) and underwater observatories routinely record several hours of video material every day. Manual processing of such large amounts of video has become a major bottleneck for scientific research based on this data. We have developed an automated system that detects, tracks, and classifies objects that are of potential interest for human video annotators. By pre-selecting salient targets for track initiation using a selective attention algorithm, we reduce the complexity of multi-target tracking. Then, if an object is tracked for several frames, a visual event is created and passed to a Bayesian classifier utilizing a Gaussian mixture model to determine the object class of the detected event.
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