DeepPCO: End-to-End Point Cloud Odometry through Deep Parallel Neural Network
Odometry is of key importance for localization in the absence of a map. There is considerable work in the area of visual odometry (VO), and recent advances in deep learning have brought novel approaches to VO, which directly learn salient features from raw images. These learning-based approaches hav...
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Zusammenfassung: | Odometry is of key importance for localization in the absence of a map. There
is considerable work in the area of visual odometry (VO), and recent advances
in deep learning have brought novel approaches to VO, which directly learn
salient features from raw images. These learning-based approaches have led to
more accurate and robust VO systems. However, they have not been well applied
to point cloud data yet. In this work, we investigate how to exploit deep
learning to estimate point cloud odometry (PCO), which may serve as a critical
component in point cloud-based downstream tasks or learning-based systems.
Specifically, we propose a novel end-to-end deep parallel neural network called
DeepPCO, which can estimate the 6-DOF poses using consecutive point clouds. It
consists of two parallel sub-networks to estimate 3-D translation and
orientation respectively rather than a single neural network. We validate our
approach on KITTI Visual Odometry/SLAM benchmark dataset with different
baselines. Experiments demonstrate that the proposed approach achieves good
performance in terms of pose accuracy. |
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DOI: | 10.48550/arxiv.1910.11088 |