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视频跟踪中的自适应外观建模:综述与评估。

Adaptive appearance modeling for video tracking: survey and evaluation.

机构信息

Queen Mary University of London, London, UK.

出版信息

IEEE Trans Image Process. 2012 Oct;21(10):4334-48. doi: 10.1109/TIP.2012.2206035. Epub 2012 Jun 28.

Abstract

Long-term video tracking is of great importance for many applications in real-world scenarios. A key component for achieving long-term tracking is the tracker's capability of updating its internal representation of targets (the appearance model) to changing conditions. Given the rapid but fragmented development of this research area, we propose a unified conceptual framework for appearance model adaptation that enables a principled comparison of different approaches. Moreover, we introduce a novel evaluation methodology that enables simultaneous analysis of tracking accuracy and tracking success, without the need of setting application-dependent thresholds. Based on the proposed framework and this novel evaluation methodology, we conduct an extensive experimental comparison of trackers that perform appearance model adaptation. Theoretical and experimental analyses allow us to identify the most effective approaches as well as to highlight design choices that favor resilience to errors during the update process. We conclude the paper with a list of key open research challenges that have been singled out by means of our experimental comparison.

摘要

长期视频跟踪对于现实场景中的许多应用都非常重要。实现长期跟踪的关键组件是跟踪器更新其目标内部表示(外观模型)以适应变化条件的能力。鉴于该研究领域的快速但分散的发展,我们提出了一个用于外观模型自适应的统一概念框架,从而能够对不同方法进行有原则的比较。此外,我们引入了一种新颖的评估方法,能够在不需要设置与应用相关的阈值的情况下同时分析跟踪精度和跟踪成功率。基于所提出的框架和这种新颖的评估方法,我们对执行外观模型自适应的跟踪器进行了广泛的实验比较。理论和实验分析使我们能够确定最有效的方法,并突出在更新过程中对错误具有弹性的设计选择。我们以通过实验比较确定的关键开放性研究挑战列表结束本文。

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