CVDec 4, 2019

EmbedMask: Embedding Coupling for One-stage Instance Segmentation

arXiv:1912.01954v243 citationsHas Code
Originality Incremental advance
AI Analysis

This addresses the problem of efficient and detailed instance segmentation for computer vision applications, representing an incremental improvement over existing methods.

The authors tackled instance segmentation by proposing EmbedMask, a one-stage method that combines detection and segmentation approaches, achieving comparable performance to Mask R-CNN with more detailed masks and higher speed.

Current instance segmentation methods can be categorized into segmentation-based methods that segment first then do clustering, and proposal-based methods that detect first then predict masks for each instance proposal using repooling. In this work, we propose a one-stage method, named EmbedMask, that unifies both methods by taking advantages of them. Like proposal-based methods, EmbedMask builds on top of detection models making it strong in detection capability. Meanwhile, EmbedMask applies extra embedding modules to generate embeddings for pixels and proposals, where pixel embeddings are guided by proposal embeddings if they belong to the same instance. Through this embedding coupling process, pixels are assigned to the mask of the proposal if their embeddings are similar. The pixel-level clustering enables EmbedMask to generate high-resolution masks without missing details from repooling, and the existence of proposal embedding simplifies and strengthens the clustering procedure to achieve high speed with higher performance than segmentation-based methods. Without any bells and whistles, EmbedMask achieves comparable performance as Mask R-CNN, which is the representative two-stage method, and can produce more detailed masks at a higher speed. Code is available at github.com/yinghdb/EmbedMask.

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