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Categorization of Indoor Places Using the Kinect Sensor

机译:使用Kinect传感器对室内场所进行分类

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The categorization of places in indoor environments is an important capability for service robots working and interacting with humans. In this paper we present a method to categorize different areas in indoor environments using a mobile robot equipped with a Kinect camera. Our approach transforms depth and grey scale images taken at each place into histograms of local binary patterns (LBPs) whose dimensionality is further reduced following a uniform criterion. The histograms are then combined into a single feature vector which is categorized using a supervised method. In this work we compare the performance of support vector machines and random forests as supervised classifiers. Finally, we apply our technique to distinguish five different place categories: corridors, laboratories, offices, kitchens, and study rooms. Experimental results show that we can categorize these places with high accuracy using our approach.
机译:室内环境中的场所分类是服务型机器人与人互动和互动的一项重要功能。在本文中,我们提出了一种使用配备Kinect相机的移动机器人在室内环境中对不同区域进行分类的方法。我们的方法将在每个位置拍摄的深度和灰度图像转换为局部二值模式(LBP)的直方图,其遵循统一标准进一步降低了维度。然后将直方图组合成单个特征向量,然后使用监督方法对其进行分类。在这项工作中,我们比较了支持向量机和随机森林作为监督分类器的性能。最后,我们运用我们的技术来区分五个不同的场所类别:走廊,实验室,办公室,厨房和书房。实验结果表明,使用我们的方法可以对这些地点进行高精度分类。

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