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Unsupervised Flow Refinement near Motion Boundaries

Publication ,  Conference
Yu, S; Kim, HH; Yuan, S; Tomasi, C
Published in: BMVC 2022 - 33rd British Machine Vision Conference Proceedings
January 1, 2022

Unsupervised optical flow estimators based on deep learning have attracted increasing attention due to the cost and difficulty of annotating for ground truth. Although performance measured by average End-Point Error (EPE) has improved over the years, flow estimates are still poorer along motion boundaries (MBs), where the flow is not smooth, as is typically assumed, and where features computed by neural networks are contaminated by multiple motions. To improve flow in the unsupervised settings, we design a framework that detects MBs by analyzing visual changes along boundary candidates and replaces motions close to detections with motions farther away. Our proposed algorithm detects boundaries more accurately than a baseline method with the same inputs and is shown to improve estimates from different flow predictors without additional training.

Duke Scholars

Published In

BMVC 2022 - 33rd British Machine Vision Conference Proceedings

Publication Date

January 1, 2022
 

Citation

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Yu, S., Kim, H. H., Yuan, S., & Tomasi, C. (2022). Unsupervised Flow Refinement near Motion Boundaries. In BMVC 2022 - 33rd British Machine Vision Conference Proceedings.
Yu, S., H. H. Kim, S. Yuan, and C. Tomasi. “Unsupervised Flow Refinement near Motion Boundaries.” In BMVC 2022 - 33rd British Machine Vision Conference Proceedings, 2022.
Yu S, Kim HH, Yuan S, Tomasi C. Unsupervised Flow Refinement near Motion Boundaries. In: BMVC 2022 - 33rd British Machine Vision Conference Proceedings. 2022.
Yu, S., et al. “Unsupervised Flow Refinement near Motion Boundaries.” BMVC 2022 - 33rd British Machine Vision Conference Proceedings, 2022.
Yu S, Kim HH, Yuan S, Tomasi C. Unsupervised Flow Refinement near Motion Boundaries. BMVC 2022 - 33rd British Machine Vision Conference Proceedings. 2022.

Published In

BMVC 2022 - 33rd British Machine Vision Conference Proceedings

Publication Date

January 1, 2022