RAFT-MSF: Self-Supervised Monocular Scene Flow using Recurrent Optimizer
Learning scene flow from a monocular camera still remains a challenging task due to its ill-posedness as well as lack of annotated data. Self-supervised methods demonstrate learning scene flow estimation from unlabeled data, yet their accuracy lags behind (semi-)supervised methods. In this paper, we...
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Zusammenfassung: | Learning scene flow from a monocular camera still remains a challenging task
due to its ill-posedness as well as lack of annotated data. Self-supervised
methods demonstrate learning scene flow estimation from unlabeled data, yet
their accuracy lags behind (semi-)supervised methods. In this paper, we
introduce a self-supervised monocular scene flow method that substantially
improves the accuracy over the previous approaches. Based on RAFT, a
state-of-the-art optical flow model, we design a new decoder to iteratively
update 3D motion fields and disparity maps simultaneously. Furthermore, we
propose an enhanced upsampling layer and a disparity initialization technique,
which overall further improves accuracy up to 7.2%. Our method achieves
state-of-the-art accuracy among all self-supervised monocular scene flow
methods, improving accuracy by 34.2%. Our fine-tuned model outperforms the best
previous semi-supervised method with 228 times faster runtime. Code will be
publicly available. |
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DOI: | 10.48550/arxiv.2205.01568 |