Robust Visual Tracking Based on Convex Hull with EMD-L1


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详细

Factors such as drastic illumination variations, partial occlusion, rotation make robust visual tracking a difficult problem. Some tracking algorithms represent a target appearances based on obtained tracking results from previous frames with a linear combination of target templates. This kind of target representation is not robust to drastic appearance variations. In this paper, we propose a simple and effective tracking algorithm with a novel appearance model. A target candidate is represented by convex combinations of target templates. Measuring the similarity between a target candidate and the target templates is a key problem for a robust likelihood evaluation. The distance between a target candidate and the templates is measured using the earth mover’s distance with L1 ground distance. Comprehensive experiments demonstrate the robustness and effectiveness of the proposed tracking algorithm against state-of-the-art tracking algorithms.

作者简介

Jun Wang

Jiangxi Province Key Laboratory of Water Information Cooperative Sensing and Intelligent Processing; School of Information Engineering

Email: dengchengzhi@126.com
中国, Nanchang, 330099; Nanchang, 330099

Yuanyun Wang

Jiangxi Province Key Laboratory of Water Information Cooperative Sensing and Intelligent Processing; School of Information Engineering

Email: dengchengzhi@126.com
中国, Nanchang, 330099; Nanchang, 330099

Chengzhi Deng

Jiangxi Province Key Laboratory of Water Information Cooperative Sensing and Intelligent Processing; School of Information Engineering

编辑信件的主要联系方式.
Email: dengchengzhi@126.com
中国, Nanchang, 330099; Nanchang, 330099

Shengqian Wang

Jiangxi Province Key Laboratory of Water Information Cooperative Sensing and Intelligent Processing; School of Information Engineering

Email: dengchengzhi@126.com
中国, Nanchang, 330099; Nanchang, 330099

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