基于相关滤波的自适应尺度估计视觉跟踪方法的比较研究。

Robotics and biomimetics Pub Date : 2017-01-01 Epub Date: 2017-11-02 DOI:10.1186/s40638-017-0066-2
Z L Wang, B G Cai
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引用次数: 2

摘要

近年来,基于判别相关滤波器的方法以其计算效率和优异的性能成为视觉跟踪领域的热门方向之一,特别适合于实时应用。它们中的大多数只关注转换估计。然而,目标尺度的准确估计在长期跟踪任务中起着非常重要的作用,仍然是一个具有挑战性的问题。首先介绍了基于cf的视觉跟踪原理。综述了基于相关滤波的视觉跟踪方法中自适应尺度估计的方法,并通过实验对比分析了各种方法的性能。本文的工作可以为基于相关滤波的视觉跟踪的尺度估计问题提供更好的理解。此外,也许通过相同的策略,可以将视觉跟踪中的其他因素(如外观变化)集成到框架中,以提高基于相关滤波器的方法的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A comparison study of adaptive scale estimation in correlation filter-based visual tracking methods.

A comparison study of adaptive scale estimation in correlation filter-based visual tracking methods.

A comparison study of adaptive scale estimation in correlation filter-based visual tracking methods.

A comparison study of adaptive scale estimation in correlation filter-based visual tracking methods.

Recently, discriminative correlation filter-based method becomes one of the popular directions in the field of visual tracking because of its computational efficiency and excellent performance, which make it especially suitable for real-time application. Most of them are focused only on the transition estimation. However, accurate scale estimation of the target plays a very important role in long-term tracking task and is still a challenging problem. The principle of CF-based visual tracking is introduced first. The approaches of adaptive scale estimation in correlation filter-based visual tracking methods are summarized in this paper, and their performances are analyzed by experiment comparison. The works here can provide a better understanding on the scale estimation problem for correlation filter-based visual tracking. Furthermore, maybe with the same strategy, other factors in visual tracking, such as appearance variation, can be integrated into the framework to improve the performance of correlation filter-based method.

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