Litcius/Paper detail

Dynamic closest color warping to sort and compare palettes

Suzi Kim, Sunghee Choi

2021ACM Transactions on Graphics63 citationsDOI

Abstract

A color palette is one of the simplest and most intuitive descriptors that can be extracted from images or videos. This paper proposes a method to assess the similarity between color palettes by sorting colors. While previous palette similarity measures compare only colors without considering the overall palette combination, we sort palettes to minimize the geometric distance between colors and align them to share a common color tendency. We propose dynamic closest color warping (DCCW) to calculate the minimum distance sum between colors and the graph connecting the colors in the other palette. We evaluate the proposed palette sorting and DCCW with several datasets and demonstrate that DCCW outperforms previous methods in terms of accuracy and computing time. We validate the effectiveness of the proposed sorting technique by conducting a perceptual study, which indicates a clear preference for the results of our approach. We also demonstrate useful applications enabled by DCCW, including palette interpolation, palette navigation, and image recoloring.

Topics & Concepts

Palette (painting)Computer scienceArtificial intelligenceComputer visionsortSortingImage warpingSimilarity (geometry)Computer graphics (images)Color histogramHistogram equalizationPattern recognition (psychology)Color imageImage (mathematics)Image processingAlgorithmInformation retrievalOperating systemImage Enhancement TechniquesColor Science and ApplicationsAdvanced Vision and Imaging
Dynamic closest color warping to sort and compare palettes | Litcius