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UnDeepVO: Monocular Visual Odometry through Unsupervised Deep Learning

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arxiv 1709.06841 v2 pith:HVSP75W5 submitted 2017-09-20 cs.CV

UnDeepVO: Monocular Visual Odometry through Unsupervised Deep Learning

classification cs.CV
keywords undeepvomonoculardeepsystemlearningnetworksodometrypose
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We propose a novel monocular visual odometry (VO) system called UnDeepVO in this paper. UnDeepVO is able to estimate the 6-DoF pose of a monocular camera and the depth of its view by using deep neural networks. There are two salient features of the proposed UnDeepVO: one is the unsupervised deep learning scheme, and the other is the absolute scale recovery. Specifically, we train UnDeepVO by using stereo image pairs to recover the scale but test it by using consecutive monocular images. Thus, UnDeepVO is a monocular system. The loss function defined for training the networks is based on spatial and temporal dense information. A system overview is shown in Fig. 1. The experiments on KITTI dataset show our UnDeepVO achieves good performance in terms of pose accuracy.

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