CVOct 24, 2019

Anchor Diffusion for Unsupervised Video Object Segmentation

arXiv:1910.10895v1127 citations
Originality Incremental advance
AI Analysis

This addresses the challenge of segmenting foreground objects in videos without supervision, which is incremental as it builds on non-local operators to improve temporal modeling.

The paper tackles the problem of unsupervised video object segmentation by modeling long-term temporal dependencies to avoid drift, achieving a mean IoU of 81.7% and ranking first on the DAVIS-2016 leaderboard for unsupervised methods.

Unsupervised video object segmentation has often been tackled by methods based on recurrent neural networks and optical flow. Despite their complexity, these kinds of approaches tend to favour short-term temporal dependencies and are thus prone to accumulating inaccuracies, which cause drift over time. Moreover, simple (static) image segmentation models, alone, can perform competitively against these methods, which further suggests that the way temporal dependencies are modelled should be reconsidered. Motivated by these observations, in this paper we explore simple yet effective strategies to model long-term temporal dependencies. Inspired by the non-local operators of [70], we introduce a technique to establish dense correspondences between pixel embeddings of a reference "anchor" frame and the current one. This allows the learning of pairwise dependencies at arbitrarily long distances without conditioning on intermediate frames. Without online supervision, our approach can suppress the background and precisely segment the foreground object even in challenging scenarios, while maintaining consistent performance over time. With a mean IoU of $81.7\%$, our method ranks first on the DAVIS-2016 leaderboard of unsupervised methods, while still being competitive against state-of-the-art online semi-supervised approaches. We further evaluate our method on the FBMS dataset and the ViSal video saliency dataset, showing results competitive with the state of the art.

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