Unmixing-Based Soft Color Segmentation for Image Manipulation


We present a new method for decomposing an image into a set of soft color segments that are analogous to color layers with alpha channels that have been commonly utilized in modern image manipulation software.

April 21, 2017
ACM Transactions on Graphics (TOG) 2017



Yagiz Aksoy (Disney Research/ETH Joint PhD)

Tunc Aydin (Disney Research)

Aljoscha Smolic (Disney Research)

Marc Pollefeys (ETH Zurich)

Unmixing-Based Soft Color Segmentation for Image Manipulation


We show that the resulting decomposition serves as an effective intermediate image representation, which can be utilized for performing various, seemingly unrelated, image manipulation tasks. We identify a set of requirements that soft color segmentation methods have to fulfill and present an in-depth theoretical analysis of prior work. We propose an energy formulation for producing compact layers of homogeneous colors and a color refinement procedure, as well as a method for automatically estimating a statistical color model from an image. This results in a novel framework for automatic and high-quality soft color segmentation that is efficient, parallelizable, and scalable. We show that our technique is superior in quality compared to previous methods through quantitative analysis as well as visually through an extensive set of examples. We demonstrate that our soft color segments can easily be exported to familiar image manipulation software packages and used to produce compelling results for numerous image manipulation applications without forcing the user to learn new tools and workflows.

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