个性化文献订阅>期刊> OPTICAL ENGINEERING
 

Comparison of perceptual color spaces for natural image segmentation tasks

  作者 Correa-Tome, FE; Sanchez-Yanez, RE; Ayala-Ramirez, V  
  选自 期刊  OPTICAL ENGINEERING;  卷期  2011年50-11;  页码  117203-117203  
  关联知识点  
 

[摘要]Color image segmentation largely depends on the color space chosen. Furthermore, spaces that show perceptual uniformity seem to outperform others due to their emulation of the human perception of color. We evaluate three perceptual color spaces, CIELAB, CIELUV, and RLAB, in order to determine their contribution to natural image segmentation and to identify the space that obtains the best results over a test set of images. The nonperceptual color space RGB is also included for reference purposes. In order to quantify the quality of resulting segmentations, an empirical discrepancy evaluation methodology is discussed. The Berkeley Segmentation Dataset and Benchmark is used in test series, and two approaches are taken to perform the experiments: supervised pixelwise classification using reference colors, and unsupervised clustering using k-means. A majority filter is used as a postprocessing stage, in order to determine its contribution to the result. Furthermore, a comparison of elapsed times taken by the required transformations is included. The main finding of our study is that the CIELUV color space outperforms the other color spaces in both discriminatory performance and computational speed, for the average case. (C) 2011 Society of Photo-Optical Instrumentation Engineers (SPIE). [DOI: 10.1117/1.3651799]

 
      被申请数(0)  
 

[全文传递流程]

一般上传文献全文的时限在1个工作日内