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RGB-D Based Semantic SLAM Framework for Rescue Robot

机译:基于RGB-D的语义SLAM框架,用于救援机器人

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Semantic information has proven to be an enabling factor for robots to better understand their surroundings. In this paper, we propose an RGB-D based semantic simultaneous localization and mapping (SLAM) framework for rescue robots. By augmenting the RGB-D SLAM system with a convolutional neural network (CNN), our framework can generate not only dense geometric point-cloud maps but also corresponding point-wise semantic information (i.e. a semantic map). After obtaining the semantic map, the rescue robot can distinguish types of terrains, so as to avoid obstacles and find out paths with higher traversability. On the one hand, we utilize depth information to determine whether neighboring pixels in semantic images belong to the same object, so as to filter the segmentation results of each frame. On the other hand, we filter the semantic map by accumulating data of multiple frames and searching consistent semantic labels. To validate the efficiency of the proposed semantic SLAM framework, we generate an RGB-D dataset of the RoboCup Rescue-Robot-League (RRL) competition environment. The experiment proves that our semantic SLAM framework can generate dense and accurate semantic maps for the complex RRL competition environment.
机译:语义信息已被证明是机器人的支持因素,以更好地了解周围环境。在本文中,我们提出了一种基于RGB-D的语义同步定位和映射(SLAM)框架,用于救援机器人。通过使用卷积神经网络(CNN)增强RGB-D SLAM系统,我们的框架不仅可以产生密集的几何点云映射,还可以产生对应的点语义信息(即语义地图)。在获得语义地图之后,救援机器人可以区分地形的类型,以避免障碍物并找出具有更高遍历的路径。一方面,我们利用深度信息来确定语义图像中的相邻像素是否属于同一对象,以便过滤每个帧的分段结果。另一方面,我们通过累积多帧的数据并搜索一致的语义标签来过滤语义映射。为了验证所提出的语义SLAM框架的效率,我们会生成Robocup Rescue-Cobot-联赛(RRL)竞争环境的RGB-D数据集。实验证明,我们的语义SLAM框架可以为复杂的RRL竞争环境产生密集和准确的语义地图。

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