Adaptive visual tracking based on discriminative feature selection for mobile robot

Peng Wang, Jianhua Su, Wanyi Li, Hong Qiao
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引用次数: 6

Abstract

The main challenges of visual tracking for mobile robot come from variation of target's appearance and disturbance of environment, such as pose changes of target, illumination changes, and cluttered background. This paper presents a robust adaptive visual tracker which is able to capture the varying appearance of target under different environments without gradual drift. We propose a novel and flexible feature space evaluation function which is formed by the weighted sum of two components: the similarity measure and the discriminating ability measure. To minimize the influence of background, a new salient feature selection mechanism is proposed to clearly distinguish between target and background. A novel target model updating mechanism is introduced to avoid gradual model drift with time, and a pure, adaptive and time-continuous target model is obtained for each input frame without off-line training and prior knowledge. The proposed discriminative feature selection and target model updating mechanism is embedded in a Mean-shift tracking system which iteratively finds the nearest local optimal localization of target. Experimental results on a mobile robot system demonstrate the robust performance of the proposed algorithm under different challenging conditions.
基于判别特征选择的移动机器人自适应视觉跟踪
移动机器人视觉跟踪面临的主要挑战是目标外观的变化和环境的干扰,如目标姿态的变化、光照的变化、背景的杂乱等。本文提出了一种鲁棒的自适应视觉跟踪器,该跟踪器能够在不同环境下捕捉目标的变化外观,而不会逐渐漂移。本文提出了一种新颖而灵活的特征空间评价函数,该函数由相似性测度和判别能力测度两个分量的加权和构成。为了最大限度地减少背景的影响,提出了一种新的显著特征选择机制,以明确区分目标和背景。引入了一种新的目标模型更新机制,避免了模型随时间的逐渐漂移,在不需要离线训练和先验知识的情况下,对每个输入帧获得一个纯粹的、自适应的、时间连续的目标模型。将所提出的判别特征选择和目标模型更新机制嵌入到Mean-shift跟踪系统中,该系统迭代地找到目标最近的局部最优定位。在移动机器人系统上的实验结果证明了该算法在不同挑战性条件下的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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