An Improved Indoor Map Construction Method Based on Millimeter-Wave Radar

2021 7th International Conference on Automation, Robotics and Applications (ICARA)(2021)

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摘要
Aimed at enhancing accuracy and enriching semantic features of indoor map construction which is used for path planning of robot, this paper proposes a novel method based on extracting features from point clouds which come from millimeter-wave radar, combined convolutional neural networks. Data obtained from millimeter-wave radar are divided into two parts. One part extracts line segments and edge points as features of point clouds. The features build similar index is used to represent similarity between two point clouds to choose optimal transform matrix which transforms one point cloud into another. We take advantage of influences of different materials on millimeter-wave, using convolutional neural networks to distinguish different materials in environments to construct semantic maps. The results of experiments show that our method can achieve more accurate map than the typical map construction algorithm. The results also show that the obtained map can effectively represent materials categories of indoor environment.
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关键词
Indoor Map Construction,Material Classify,Convolutional Neural Networks,Space Feature Extraction
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