IEEE Trans Image Process. 2014 Dec;23(12):4941-53. doi: 10.1109/TIP.2014.2323132. Epub 2014 May 30.
Automatically extracting foreground objects from a natural image remains a challenging task. This paper presents a learning-based hierarchical graph for unsupervised matting. The proposed hierarchical framework progressively condenses image data from pixels into cells, from cells into components, and finally from components into matting layers. First, in the proposed framework, a graph-based contraction process is proposed to condense image pixels into cells in order to reduce the computational loads in the subsequent processes. Cells are further mapped into matting components using spectral clustering over a learning based graph. The graph affinity is efficiently learnt from image patches of different resolutions and the inclusion of multiscale information can effectively improve the performance of spectral clustering. In the final stage of the hierarchical scheme, we propose a multilayer foreground estimation process to assemble matting components into a set of matting layers. Unlike conventional approaches, which typically address binary foreground/background partitioning, the proposed method provides a set of multilayer interpretations for unsupervised matting. Experimental results show that the proposed approach can generate more consistent and accurate results as compared with state-of-the-art techniques.
从自然图像中自动提取前景对象仍然是一项具有挑战性的任务。本文提出了一种基于学习的分层图用于无监督抠图。所提出的分层框架逐步将图像数据从像素压缩到细胞,从细胞压缩到组件,最后从组件压缩到抠图层。首先,在提出的框架中,提出了一种基于图的收缩过程,以将图像像素压缩到细胞,以降低后续过程的计算负荷。使用基于学习的图上的谱聚类将细胞进一步映射到抠图组件。图亲和力可以从不同分辨率的图像块中有效地学习,并且多尺度信息的包含可以有效地提高谱聚类的性能。在分层方案的最后阶段,我们提出了一种多层前景估计过程,将抠图组件组装成一组抠图层。与传统方法通常解决二进制前景/背景分割不同,所提出的方法为无监督抠图提供了一组多层解释。实验结果表明,与最先进的技术相比,所提出的方法可以生成更一致和准确的结果。