作者
Hsin-Ping Huang, Charles Herrmann, Junhwa Hur, Erika Lu, Kyle Sargent, Austin Stone, Ming-Hsuan Yang, Deqing Sun
发表日期
2023
研讨会论文
Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition
页码范围
11412-11421
简介
Recently, AutoFlow has shown promising results on learning a training set for optical flow, but requires ground truth labels in the target domain to compute its search metric. Observing a strong correlation between the ground truth search metric and self-supervised losses, we introduce self-supervised AutoFlow to handle real-world videos without ground truth labels. Using self-supervised loss as the search metric, our self-supervised AutoFlow performs on par with AutoFlow on Sintel and KITTI where ground truth is available, and performs better on the real-world DAVIS dataset. We further explore using self-supervised AutoFlow in the (semi-) supervised setting and obtain competitive results against the state of the art.
引用总数
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HP Huang, C Herrmann, J Hur, E Lu, K Sargent… - Proceedings of the IEEE/CVF Conference on Computer …, 2023