救援装备行走语义地形的三维重建

Peng Zhang, Yi Xiao, Xinqing Wang, Honghui Xu
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摘要

传统的多腿救援设备大多采用半自主控制,缺乏灵活性和可操作性。此外,通信距离远、环境特殊性等条件也使得救援设备的实时控制难以实现。因此,救援设备的自主行为能力越来越受到人们的重视。环保意识是救援设备独立行走的先决条件。救援设备只有具备极强的环保意识能力,才能正确规划运动路线,避免不必要的危险。针对野外地形复杂的情况,提出了一种构建语义地形的方法。利用三角网将分散的点云连接成规则的曲面,然后利用曲面的基本特征对地形进行分类,形成救援设备可识别的语义地形。我们对我们建立的点云数据集进行了3D重建。实验表明,该方法速度快,百万点的构建仅需2.5s,基本可以达到实时性,能够满足救援设备实时自主运动的效果。
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Three-dimensional Reconstruction of the Semantic Terrain of Rescue Equipment Walking
Most traditional multi-legged rescue equipment uses semi-autonomous control, which is not flexible and maneuverable. In addition, conditions such as long-distance communication and environmental particularity make it difficult to achieve real-time control of rescue equipment. Therefore, more and more attention has been paid to the autonomous behavior ability of rescue equipment. Environmental awareness is a prerequisite for rescue equipment to walk independently. Only with extremely strong environmental awareness ability can rescue equipment correctly plan the movement route and avoid unnecessary danger. Aiming at the situation of complex terrain in the wild, a method for constructing semantic terrain is proposed. The triangulated network is used to connect the scattered point clouds into regular surfaces, and then the basic features of the surface are used to classify the terrain to forma semantic terrain recognizable by rescue equipment. We performed 3D reconstruction on the point cloud data set that we built. Experiments show that this method is fast, and the construction of million points only takes 2.5s, which can basically achieve real-time performance and can meet the effect of real-time autonomous movement of rescue equipment.
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