Semantic Image Matting: General and Specific Semantics

被引:0
|
作者
Yanan Sun
Chi-Keung Tang
Yu-Wing Tai
机构
[1] HKUST,
[2] Dartmouth College,undefined
来源
International Journal of Computer Vision | 2024年 / 132卷
关键词
Image matting; Semantics; Classification; Class-specific matting;
D O I
暂无
中图分类号
学科分类号
摘要
Although conventional matting formulation can separate foreground from background in fractional occupancy which can be caused by highly transparent objects, complex foreground (e.g., net or tree), and objects containing very fine details (e.g., hairs), no previous work has attempted to reason the underlying causes of matting due to various foreground semantics in general. We show how to obtain better alpha mattes by incorporating into our framework semantic classification of matting regions. Specifically, we consider and learn 20 classes of general matting patterns, and propose to extend the conventional trimap to semantic trimap. The proposed semantic trimap can be obtained automatically through patch structure analysis within trimap regions. Meanwhile, we learn a multi-class discriminator to regularize the alpha prediction at semantic level, and content-sensitive weights to balance different regularization losses. Experiments on multiple benchmarks show that our method outperforms other methods benefit from such general alpha semantics and has achieved the most competitive state-of-the-art performance. We further explore the effectiveness of our method on specific semantics by specializing our method into human matting and transparent object matting. Experimental results on specific semantics demonstrate alpha matte semantic information can boost performance for not only general matting but also class-specific matting. Finally, we contribute a large-scale Semantic Image Matting Dataset constructed with careful consideration of data balancing across different semantic classes. Code and dataset are available in https://github.com/nowsyn/SIM.
引用
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页码:710 / 730
页数:20
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