Self-supervised Video Object Segmentation by Motion Grouping
It addresses motion segmentation for computer vision systems, offering a self-supervised approach that reduces bias towards visual appearance, though it is incremental as it builds on existing motion-based methods.
The paper tackles video object segmentation by using motion cues without manual annotations, achieving superior or comparable results to self-supervised methods on benchmarks like DAVIS2016 and significantly outperforming them on a camouflage dataset, while being much faster.
Animals have evolved highly functional visual systems to understand motion, assisting perception even under complex environments. In this paper, we work towards developing a computer vision system able to segment objects by exploiting motion cues, i.e. motion segmentation. We make the following contributions: First, we introduce a simple variant of the Transformer to segment optical flow frames into primary objects and the background. Second, we train the architecture in a self-supervised manner, i.e. without using any manual annotations. Third, we analyze several critical components of our method and conduct thorough ablation studies to validate their necessity. Fourth, we evaluate the proposed architecture on public benchmarks (DAVIS2016, SegTrackv2, and FBMS59). Despite using only optical flow as input, our approach achieves superior or comparable results to previous state-of-the-art self-supervised methods, while being an order of magnitude faster. We additionally evaluate on a challenging camouflage dataset (MoCA), significantly outperforming the other self-supervised approaches, and comparing favourably to the top supervised approach, highlighting the importance of motion cues, and the potential bias towards visual appearance in existing video segmentation models.