Compartir
Título
CQ100: a high-quality image dataset for color quantization research
Autor(es)
Palabras clave
Image processing
Data clustering
Dataset
CQ100
Color quantization
Fecha de publicación
2023-06-07
Editor
SPIE-SOC Photo-Optical Instrumentation
Citación
Celebi, M. E., & Pérez-Delgado, M. L. (2023). cq100: a high-quality image dataset for color quantization research. Journal of Electronic Imaging, 32(3), 033019-033019
Resumen
[EN]Color quantization ( CQ ) is a classical image processing operation that reduces the number of distinct colors in a given image. Although the idea of CQ dates back to the early 1970s, the first true CQ algorithm, median-cut, was proposed later in 1980. Since then, hundreds of publications have investigated the topic of CQ, proposing dozens of algorithms. A vast majority of these publications demonstrate their results on small datasets, containing a handful of images of mixed quality.
Furthermore, the reproducibility of CQ research is often limited due to the use of private test images or public test images with multiple non-identical copies on the World Wide Web or restrictive licenses. To address these problems, we curated a large, diverse, and high-quality dataset of 24-bit color images called CQ 100 and released it under a permissive license. We present an overview of CQ 100 and demonstrate its use in comparing CQ algorithms.
URI
ISSN
1017-9909
DOI
10.1117/1.jei.32.3.033019
Versión del editor
Aparece en las colecciones
- CIMET. Artículos [18]
Dateien zu dieser Ressource
Tamaño:
30.74Mb
Formato:
Adobe PDF












