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Human Re-Identification with a Robot Thermal Camera Using Entropy-Based Sampling

机译:使用基于熵的采样用机器人热摄像机进行人力重新识别

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Human re-identification is an important feature of domestic service robots, in particular for elderly monitoring and assistance, because it allows them to perform personalized tasks and human-robot interactions. However vision-based re- identification systems are subject to limitations due to human pose and poor lighting conditions. This paper presents a new re-identification method for service robots using thermal images. In robotic applications, as the number and size of thermal datasets is limited, it is hard to use approaches that require huge amount of training samples. We propose a re-identification system that can work using only a small amount of data. During training, we perform entropy-based sampling to obtain a thermal dictionary for each person. Then, a symbolic representation is produced by converting each video into sequences of dictionary elements. Finally, we train a classifier using this symbolic representation and geometric distribution within the new representation domain. The experiments are performed on a new thermal dataset for human re-identification, which includes various situations of human motion, poses and occlusion, and which is made publicly available for research purposes. The proposed approach has been tested on this dataset and its improvements over standard approaches have been demonstrated.
机译:人类重新识别是国内服务机器人的重要特征,特别是对于老年人监测和援助,因为它允许他们执行个性化任务和人机交互。然而,由于人类姿势和差的照明条件,基于视觉的重新识别系统受到限制。本文介绍了使用热图像的服务机器人的新重新识别方法。在机器人应用中,随着热数据集的数量和尺寸是有限的,很难使用需要大量训练样本的方法。我们提出了一种重新识别系统,可以仅使用少量数据工作。在培训期间,我们执行基于熵的采样以获得每个人的热词典。然后,通过将每个视频转换为字典元素的序列来产生符号表示。最后,我们使用新的表示域内使用此符号表示和几何分布训练分类器。该实验在用于人类重新识别的新的热数据集上进行,其包括人类运动,姿势和闭塞的各种情况,并公开可用于研究目的。在该数据集中测试了所提出的方法,并证明了其对标准方法的改进。

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