Globally Consistent Video Depth and Pose Estimation with Efficient Test-Time Training
Dense depth and pose estimation is a vital prerequisite for various video applications. Traditional solutions suffer from the robustness of sparse feature tracking and insufficient camera baselines in videos. Therefore, recent methods utilize learning-based optical flow and depth prior to estimate d...
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Zusammenfassung: | Dense depth and pose estimation is a vital prerequisite for various video
applications. Traditional solutions suffer from the robustness of sparse
feature tracking and insufficient camera baselines in videos. Therefore, recent
methods utilize learning-based optical flow and depth prior to estimate dense
depth. However, previous works require heavy computation time or yield
sub-optimal depth results. We present GCVD, a globally consistent method for
learning-based video structure from motion (SfM) in this paper. GCVD integrates
a compact pose graph into the CNN-based optimization to achieve globally
consistent estimation from an effective keyframe selection mechanism. It can
improve the robustness of learning-based methods with flow-guided keyframes and
well-established depth prior. Experimental results show that GCVD outperforms
the state-of-the-art methods on both depth and pose estimation. Besides, the
runtime experiments reveal that it provides strong efficiency in both short-
and long-term videos with global consistency provided. |
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DOI: | 10.48550/arxiv.2208.02709 |