Improving The Performance Of K-means For Color Quantization | Awesome Learning to Hash Add your paper to Learning2Hash

Improving The Performance Of K-means For Color Quantization

Celebi M. Emre. Image and Vision Computing 2011

[Paper]    
Graph Quantisation Unsupervised

Color quantization is an important operation with many applications in graphics and image processing. Most quantization methods are essentially based on data clustering algorithms. However, despite its popularity as a general purpose clustering algorithm, k-means has not received much respect in the color quantization literature because of its high computational requirements and sensitivity to initialization. In this paper, we investigate the performance of k-means as a color quantizer. We implement fast and exact variants of k-means with several initialization schemes and then compare the resulting quantizers to some of the most popular quantizers in the literature. Experiments on a diverse set of images demonstrate that an efficient implementation of k-means with an appropriate initialization strategy can in fact serve as a very effective color quantizer.

Similar Work