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Mask Guided Matting via Progressive Refinement Network

About

We propose Mask Guided (MG) Matting, a robust matting framework that takes a general coarse mask as guidance. MG Matting leverages a network (PRN) design which encourages the matting model to provide self-guidance to progressively refine the uncertain regions through the decoding process. A series of guidance mask perturbation operations are also introduced in the training to further enhance its robustness to external guidance. We show that PRN can generalize to unseen types of guidance masks such as trimap and low-quality alpha matte, making it suitable for various application pipelines. In addition, we revisit the foreground color prediction problem for matting and propose a surprisingly simple improvement to address the dataset issue. Evaluation on real and synthetic benchmarks shows that MG Matting achieves state-of-the-art performance using various types of guidance inputs. Code and models are available at https://github.com/yucornetto/MGMatting.

Qihang Yu, Jianming Zhang, He Zhang, Yilin Wang, Zhe Lin, Ning Xu, Yutong Bai, Alan Yuille• 2020

Related benchmarks

TaskDatasetResultRank
Image MattingComposition-1K (test)
SAD31.5
203
MattingDistinction-646 (test)
SAD33.24
45
Video MattingV-HIM60 Hard
MAD63.8374
29
MattingAIM-500 (test)
SAD71.91
28
Semantic segmentationBIG dataset (test)
IoU91.62
24
Natural Image MattingDistinctions-646 (test)
SAD36.6
21
Image SegmentationBIG (test)
IoU91.62
20
Video MattingYouTubeMatte 1920x1080 (test)
MAD3.4973
20
Instance MattingHIM2K Natural
IMQmad57.98
16
Instance MattingHIM2K Synthetic
IMQmad51.67
16
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