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Real-time human detection with depth camera via a physical radius-depth detector and a CNN descriptor

机译:通过物理半径深度检测器和CNN描述符使用深度相机进行实时人体检测

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Real-time human detection is important for a wide range of applications. In this paper, a two-staged method has been developed for real-time human detection in cluttered and dynamic environments with depth data. We start with generating a set of possible human head-tops to ensure all human locations are included. To this end, a novel physical radius-depth (PRD) detector is proposed to quickly detect human candidates. The second stage applies a convolutional neural network (CNN), aiming at extracting feature of human upper body automatically instead of hand-crafting, and then on the basis of CNN feature genuine human candidates are preserved while false ones are filtered out. Experiment results on four publicly available datasets, including a dataset under weak illumination or even total darkness, show that the proposed method can reliably detect human in RGB-D videos in real time without GPU acceleration, and yields higher accuracy than the compared state-of-the-art approaches.
机译:实时人体检测对于广泛的应用非常重要。在本文中,已经开发了一种分两步的方法,用于在混乱和动态环境中使用深度数据进行实时人体检测。我们首先生成一组可能的人类头顶,以确保包括所有人类位置。为此,提出了一种新颖的物理半径深度(PRD)检测器以快速检测人类候选者。第二阶段应用卷积神经网络(CNN),其目的是自动提取人体上半身的特征,而不是手工制作,然后基于CNN特征,保留真正的人类候选人,同时过滤掉虚假的人类候选人。在四个公共可用数据集上的实验结果(包括在弱光照甚至完全黑暗的数据集下)表明,该方法可以可靠地实时检测RGB-D视频中的人,而无需GPU加速,并且比同类状态具有更高的准确性。最先进的方法。

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