Adaptive online learning for human tracking

Bing-Fei Wu, Pin-Yi Tseng, Cheng-Lung Jen, Tai-Yu Tsou, Kai-Tse Hsiao
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引用次数: 3

Abstract

In this work, we present a multiple classifiers system cascades an on-line learning RGB-D appearance model framework in which detection, recognition, and tracking are highly coupled for a wheelchair robot equipped with a Kinect sensor to improve the efficiency of the care assistance and quality of accompanying service. The on-line trained classifiers use the surrounding background as negative examples in the updating which allows the algorithm to choose the most discriminative features between the target and the background, incrementally adjust to the changes in specific tracking environment. Meanwhile, a depth clustering based human detection is proposed to extract human candidates. Accordantly, an on-line learning RGB-D appearance model is cascaded to strengthen the human tracking function by dealing with color, depth and position information from the identified caregiver. Consequently, several experiments have been conducted to demonstrate the effectiveness and feasibility in real world environments.
用于人体跟踪的自适应在线学习
在这项工作中,我们提出了一个多分类器系统级联在线学习RGB-D外观模型框架,其中检测,识别和跟踪高度耦合,用于配备Kinect传感器的轮椅机器人,以提高护理辅助的效率和伴随服务的质量。在线训练的分类器在更新时使用周围背景作为负例,使算法能够选择目标与背景之间最具判别性的特征,增量适应特定跟踪环境的变化。同时,提出了一种基于深度聚类的人体检测方法来提取候选人体。因此,在线学习RGB-D外观模型通过处理来自已识别的看护者的颜色、深度和位置信息来增强人体跟踪功能。因此,已经进行了几个实验来证明在现实世界环境中的有效性和可行性。
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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