Image Matting
Image matting is the computational task of separating a foreground object from its background in an image, producing an alpha matte representing the object's transparency. Current research emphasizes improving accuracy and efficiency, particularly through the development of generative models (like diffusion models) and transformer-based architectures, often aiming to reduce reliance on labor-intensive manual annotations (e.g., trimaps) by utilizing weaker supervision or interactive user input. These advancements have significant implications for various applications, including image editing, video production, and augmented reality, by enabling more realistic and efficient compositing and manipulation of digital imagery.
Papers
Robust Human Matting via Semantic Guidance
Xiangguang Chen, Ye Zhu, Yu Li, Bingtao Fu, Lei Sun, Ying Shan, Shan Liu
3D Matting: A Benchmark Study on Soft Segmentation Method for Pulmonary Nodules Applied in Computed Tomography
Lin Wang, Xiufen Ye, Donghao Zhang, Wanji He, Lie Ju, Yi Luo, Huan Luo, Xin Wang, Wei Feng, Kaimin Song, Xin Zhao, Zongyuan Ge
PP-Matting: High-Accuracy Natural Image Matting
Guowei Chen, Yi Liu, Jian Wang, Juncai Peng, Yuying Hao, Lutao Chu, Shiyu Tang, Zewu Wu, Zeyu Chen, Zhiliang Yu, Yuning Du, Qingqing Dang, Xiaoguang Hu, Dianhai Yu
Situational Perception Guided Image Matting
Bo Xu, Jiake Xie, Han Huang, Ziwen Li, Cheng Lu, Yong Tang, Yandong Guo