基于软判决检测的鲁棒目标跟踪

Bo Wu, Li Zhang, V. Kumar Singh, R. Nevatia
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引用次数: 7

摘要

提出了一种基于检测的目标跟踪方法,通过关联检测响应形成目标轨迹。学习已知类别对象的判别分类器,并逐帧应用于视频序列。检测模块的输出是一个“软决策”,它由一组不同置信度的检测响应组成。不同置信水平的响应由不同复杂度的分类器产生。便宜的分类器首先应用于整个图像,而昂贵的分类器只应用于被便宜的分类器接受为目标的区域。目标轨迹由高置信度的响应初始化;假设的对象是通过将所有的反应按其置信度的顺序联系起来来跟踪的。该方法适用于室内会议视频和室外监控视频中的人体跟踪问题。在两个公开的视频语料库上对该系统进行了评价,并与已有的方法进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust Object Tracking based on Detection with Soft Decision
This paper presents a detection based object tracking method that forms object trajectories by associating detection responses. Discriminative classifiers of objects of a known class are learned and applied to the video sequence frame by frame. The output of the detection module is a "soft decision", which consists of a set of detection responses of different confidence levels. Responses of different confidence levels are generated by classifiers with different complexities. The cheap classifiers are applied to the whole image first, while the expensive classifiers are only applied to the region accepted as object by the cheap classifiers. Object trajectories are initialized from the responses of higher confidence; hypothesized objects are tracked by associating with all the responses in the order of their confidence levels. The proposed approach is applied to the problems of human tracking in indoor meeting videos and outdoor surveillance videos. The system is evaluated on two public video corpora and compared with some previous methods.
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