CVNov 15, 2019

CenterMask : Real-Time Anchor-Free Instance Segmentation

arXiv:1911.06667v6655 citationsHas Code
Originality Incremental advance
AI Analysis

This provides a faster and more accurate solution for real-time instance segmentation in computer vision applications, though it is incremental as it builds on existing methods like FCOS and Mask R-CNN.

The paper tackles real-time instance segmentation by proposing CenterMask, which adds a spatial attention-guided mask branch to an anchor-free detector and introduces an improved backbone network, achieving 38.3% accuracy on a benchmark and over 35fps speed.

We propose a simple yet efficient anchor-free instance segmentation, called CenterMask, that adds a novel spatial attention-guided mask (SAG-Mask) branch to anchor-free one stage object detector (FCOS) in the same vein with Mask R-CNN. Plugged into the FCOS object detector, the SAG-Mask branch predicts a segmentation mask on each box with the spatial attention map that helps to focus on informative pixels and suppress noise. We also present an improved backbone networks, VoVNetV2, with two effective strategies: (1) residual connection for alleviating the optimization problem of larger VoVNet \cite{lee2019energy} and (2) effective Squeeze-Excitation (eSE) dealing with the channel information loss problem of original SE. With SAG-Mask and VoVNetV2, we deign CenterMask and CenterMask-Lite that are targeted to large and small models, respectively. Using the same ResNet-101-FPN backbone, CenterMask achieves 38.3%, surpassing all previous state-of-the-art methods while at a much faster speed. CenterMask-Lite also outperforms the state-of-the-art by large margins at over 35fps on Titan Xp. We hope that CenterMask and VoVNetV2 can serve as a solid baseline of real-time instance segmentation and backbone network for various vision tasks, respectively. The Code is available at https://github.com/youngwanLEE/CenterMask.

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