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首页> 外文期刊>Sensors >Stairs and Doors Recognition as Natural Landmarks Based on Clouds of 3D Edge-Points from RGB-D Sensors for Mobile Robot Localization ?
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Stairs and Doors Recognition as Natural Landmarks Based on Clouds of 3D Edge-Points from RGB-D Sensors for Mobile Robot Localization ?

机译:基于来自RGB-D传感器的3D边缘点云将楼梯和门识别为自然地标,以进行移动机器人定位?

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摘要

Natural landmarks are the main features in the next step of the research in localization of mobile robot platforms. The identification and recognition of these landmarks are crucial to better localize a robot. To help solving this problem, this work proposes an approach for the identification and recognition of natural marks included in the environment using images from RGB-D (Red, Green, Blue, Depth) sensors. In the identification step, a structural analysis of the natural landmarks that are present in the environment is performed. The extraction of edge points of these landmarks is done using the 3D point cloud obtained from the RGB-D sensor. These edge points are smoothed through the S l 0 algorithm, which minimizes the standard deviation of the normals at each point. Then, the second step of the proposed algorithm begins, which is the proper recognition of the natural landmarks. This recognition step is done as a real-time algorithm that extracts the points referring to the filtered edges and determines to which structure they belong to in the current scenario: stairs or doors. Finally, the geometrical characteristics that are intrinsic to the doors and stairs are identified. The approach proposed here has been validated with real robot experiments. The performed tests verify the efficacy of our proposed approach.
机译:自然地标是下一步移动机器人平台本地化研究的主要特征。这些地标的识别和识别对于更好地定位机器人至关重要。为了帮助解决这个问题,这项工作提出了一种使用RGB-D(红色,绿色,蓝色,深度)传感器的图像来识别和识别环境中自然标记的方法。在识别步骤中,对环境中存在的自然界标进行结构分析。这些地标的边缘点的提取是使用从RGB-D传感器获得的3D点云完成的。这些边缘点通过S l 0算法进行平滑处理,从而使每个点的法线的标准偏差最小。然后,该算法的第二步开始,这是对自然界标的正确识别。此识别步骤是作为一种实时算法完成的,该算法提取与滤波后的边缘有关的点,并确定它们在当前场景中属于哪种结构:楼梯或门。最后,确定了门和楼梯固有的几何特征。此处提出的方法已通过实际的机器人实验验证。进行的测试证明了我们提出的方法的有效性。

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