Multi-object tracking using TLD framework

S. Sharma, A. Khachane, Dilip Motwani
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引用次数: 5

Abstract

This paper demonstrates the framework for multi-object tracking using TLD background. We examine long-term tracking of object in a video stream. The object is characterized by its location and extent in the video frame. In every next frame, the aim is to calculate the location and extent of object or indicate that object is not present. There are different algorithms which perceive the object in real-time. This system proposes a model which uses modified template matching algorithm based on SURF algorithm and squared difference error method. The template matching is done based on comparison of image features. SURF algorithm of template matching is based on feature point detection from images whereas as the template matching is based on pixel feature comparison. We develop a novel method of tracking based upon template tracking algorithm which crops the region of interest(ROI) from the selected live object from a video stream from trained object database. Matching feature is found by applying principle component analysis.
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基于TLD框架的多目标跟踪
本文演示了基于TLD背景的多目标跟踪框架。我们研究视频流中目标的长期跟踪。物体的特征是它在视频帧中的位置和范围。在下一帧中,目标是计算物体的位置和范围,或者表明物体不存在。有不同的算法可以实时感知物体。该系统提出了一种基于SURF算法和误差平方差法的改进模板匹配算法模型。模板匹配是基于图像特征的比较。模板匹配的SURF算法是基于图像的特征点检测,而模板匹配是基于像素特征比较。本文提出了一种基于模板跟踪算法的跟踪方法,该方法从训练对象数据库中选取视频流中的实时对象,从中裁剪出感兴趣区域(ROI)。通过主成分分析找到匹配特征。
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