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A real-time Deep Learning pedestrian detector for robot navigation

机译:用于机器人导航的实时深度学习行人检测器

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A real-time Deep Learning based method for Pedestrian Detection (PD) is applied to the Human-Aware robot navigation problem. The pedestrian detector combines the Aggregate Channel Features (ACF) detector with a deep Convolutional Neural Network (CNN) in order to obtain fast and accurate performance. Our solution is firstly evaluated using a set of real images taken from onboard and offboard cameras and, then, it is validated in a typical robot navigation environment with pedestrians (two distinct experiments are conducted). The results on both tests show that our pedestrian detector is robust and fast enough to be used on robot navigation applications.
机译:一种基于实时深度学习的行人检测(PD)方法,被应用于人类感知机器人导航问题。行人检测器将集合通道特征(ACF)检测器与深层卷积神经网络(CNN)结合在一起,以获得快速而准确的性能。我们的解决方案首先使用从车载和舷外摄像机拍摄的一组真实图像进行评估,然后在具有行人的典型机器人导航环境中进行验证(进行了两个不同的实验)。两项测试的结果均表明,我们的行人检测器坚固耐用,足以在机器人导航应用中使用。

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