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LLN-SLAM: A Lightweight Learning Network Semantic SLAM

机译:lln-slam:轻量级学习网络语义猛击

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Semantic SLAM is a hot research subject in the field of computer vision in recent years. The mainstream semantic SLAM method can perform real-time semantic extraction. However, under resource-constrained platforms, the algorithm does not work properly. This paper proposes a lightweight semantic LLN-SLAM method for portable devices. The method extracts the semantic information through the matching of the Object detection and the point cloud segmentation projection. In order to ensure the running speed of the program, lightweight network MobileNet is used in the Object detection and Euclidean distance clustering is applied in the point cloud segmentation. In a typical augmented reality application scenario, there is no rule to avoid the movement of others outside the user in the scene. This brings a big error to the visual positioning. So, semantic information is used to assist the positioning. The algorithm does not extract features on dynamic semantic objects. The experimental results show that the method can run stably on portable devices. And the positioning error caused by the movement of the dynamic object can be effectively corrected while establishing the environmental semantic map.
机译:近年来,语义SLAM是计算机视野领域的热门研究主题。主流语义SLAM方法可以执行实时语义提取。但是,在资源受限的平台下,该算法无法正常工作。本文提出了一种用于便携式设备的轻质语义LLN-SLAM方法。该方法通过对象检测和点云分段投影的匹配提取语义信息。为了确保程序的运行速度,在对象检测中使用轻量级网络MobileNet,并在点云分割中应用欧几里德距离聚类。在典型的增强现实应用方案中,没有规则来避免在场景中的用户外部的运动。这对视觉定位带来了很大的错误。因此,语义信息用于帮助定位。该算法在动态语义对象上没有提取功能。实验结果表明,该方法可以稳定地在便携式设备上运行。并且可以在建立环境语义地图时有效地校正由动态对象的移动引起的定位误差。

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