Synergizing local and global models for matrix approximation
Chao Chen, Hao Zhang, et al.
CIKM 2019
Recent work has shown that optical flow estimation can be formulated as a supervised learning problem. Moreover, convolutional networks have been successfully applied to this task. However, supervised flow learning is obfuscated by the shortage of labeled training data. As a consequence, existing methods have to turn to large synthetic datasets for easily computer generated ground truth. In this work, we explore if a deep network for flow estimation can be trained without supervision. Using image warping by the estimated flow, we devise a simple yet effective unsupervised method for learning optical flow, by directly minimizing photometric consistency. We demonstrate that a flow network can be trained from end-to-end using our unsupervised scheme. In some cases, our results come tantalizingly close to the performance of methods trained with full supervision.
Chao Chen, Hao Zhang, et al.
CIKM 2019
Junchi Yan, Chao Zhang, et al.
CVPR 2015
Chao Xue, Junchi Yan, et al.
CVPR 2019
Xiangfeng Wang, Wenjie Zhang, et al.
Neurocomputing