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Dictionary Learning and Confidence Map Estimation-Based Tracker for Robot-Assisted Therapy System

机译:用于机器人辅助治疗系统的基于字典学习和置信地图估算的基于追踪器

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摘要

In this paper, we propose a new tracker based on dictionary learning and confidence map estimation for a robot-assisted therapy system. We first over-segment the image into superpixel patches, and then employ color and depth cues to estimate the object confidence of each superpixel patch. We build two Bag-of-Word (BoW) models from initial frames to encode foreground/background appearance, and compute object confidence at superpixel level using BoW model in both foreground and background. We further refine target confidence by depth-based statistical features to mitigate noise interference and the uncertainty of visual cues. We derive the global confidence of each target candidate at bag level, and incorporate the confidence estimations to determine the posterior probability of each candidate within the Bayesian framework. Experimental results demonstrate the superior performance of the proposed method, especially in long-term tracking and occlusion handling.
机译:在本文中,我们提出了一种基于词典学习的新追踪者,以及机器人辅助治疗系统的置信地图估计。我们首先将图像过度分段为Superpixel补丁,然后采用颜色和深度提示来估计每个超像素补丁的对象置信度。我们构建了来自初始帧的两个单词(弓)模型,以编码前景/背景外观,并在前景和背景中使用弓模型计算Superpixel水平的对象信心。我们通过基于深度的统计特征进一步优化目标信心以减轻噪声干扰和视觉提示的不确定性。我们从袋子级获得每个目标候选人的全球置信度,并纳入置信度估计,以确定贝叶斯框架内每种候选人的后验概率。实验结果表明了所提出的方法的优越性,特别是在长期跟踪和闭塞处理中的性能。

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