Significance of contrast and structure features for an improved color image classification system

V. Sowmya, D. Govind, K. Soman
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引用次数: 7

Abstract

In general, the three main modules of color image classification systems are: color-to-grayscale image conversion, feature extraction and classification. The color-to-grayscale image conversion is the important pre-processing step which must incorporate the significant and discriminative contrast and structure information in the converted grayscale images as in the original color image. All the existing techniques for color-to-grayscale image conversion preserves the significant contrast and structure information in the converted grayscale images in different manners. Hence, the present work is to analyze the significant and discriminative contrast and structure information preserved in the converted grayscale images using two different decolorization techniques called rgb2gray and singular value decomposition based color-to-grayscale image conversion (SVD) applied in the color image classification systems using the three different proposed features. The three different features for color image classification systems are proposed based on the combination of the existing dense SIFT features and the contrast & structure content computed using color-to-gray structure similarity index (C2G-SSIM) metric.
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对比度和结构特征对改进彩色图像分类系统的意义
一般来说,彩色图像分类系统的三个主要模块是:彩色到灰度图像转换、特征提取和分类。彩色图像到灰度图像的转换是重要的预处理步骤,它必须将转换后的灰度图像中具有显著性和判别性的对比度和结构信息与原彩色图像中的信息相结合。现有的彩色-灰度图像转换技术都以不同的方式保留了转换后的灰度图像中重要的对比度和结构信息。因此,本文的工作是利用rgb2gray和基于奇异值分解的彩色到灰度图像转换(SVD)两种不同的脱色技术,利用这三种不同的特征,分析转换后的灰度图像中保留的显著性和判别性对比度和结构信息。结合现有的密集SIFT特征和利用色灰结构相似指数(C2G-SSIM)度量计算的对比度和结构含量,提出了用于彩色图像分类系统的三种不同特征。
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