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On robot indoor scene classification based on descriptor quality and efficiency

机译:基于描述符质量和效率的机器人室内场景分类

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摘要

Indoor scene classification is usually approached from a computer vision perspective. However, in some fields like robotics, additional constraints must be taken into account. Specifically, in systems with low resources, state-of-the-art techniques (CNNs) cannot be successfully deployed. In this paper, we try to close this gap between theoretical approaches and real world solutions by performing an in-depth study of the factors that influence classifiers performance, that is, size and descriptor quality. To this end, we perform a thorough evaluation of the visual and depth data obtained with an RGB-D sensor to propose techniques to build robust descriptors that can enable real-time indoor scene classification. Those descriptors are obtained by properly selecting and combining visual and depth information sources. (C) 2017 Elsevier Ltd. All rights reserved.
机译:室内场景分类通常是从计算机视觉的角度进行的。但是,在某些领域,例如机器人技术,必须考虑其他约束。具体而言,在资源不足的系统中,无法成功部署最新技术(CNN)。在本文中,我们通过对影响分类器性能的因素(即大小和描述符质量)进行深入研究,试图缩小理论方法与实际解决方案之间的差距。为此,我们对使用RGB-D传感器获得的视觉和深度数据进行全面评估,以提出构建可靠描述符的技术,这些描述符可以实现实时室内场景分类。这些描述符是通过适当选择视觉和深度信息源并将其组合而获得的。 (C)2017 Elsevier Ltd.保留所有权利。

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