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Enhancement of Color Image Obtained from PCA-FCM Technique Using Local Area Histogram Equalization

机译:使用局部直方图均衡增强从PCA-FCM技术获得的彩色图像

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摘要

This paper presents local area enhancement of the segmented color image obtained from the multi-spectral image clustering by using FCM (fuzzy c-means). In case, the multi-spectral images, which have the number of bands more than that of 3, must decrease the data volume to remain the number of bands of 3 in order to correspond with the meaning of red, green, and blue images. PCA (Principal Components Analysis) is then used to transform original multi-spectral images into PCA images. The first three components having information more than that of original images of 95% is assigned as red, green, and blue images, namely RGB color image. FCM clustering apply to RGB color image, separately. This method is called the PCA-FCM technique being the multi-spectral image clustering. By applying such technique, the result images consisted of red, green, and blue images separately are the segmented images. By histogram equalization algorithm, the result of local area enhancement based on a number of clusters as the segmented image can solve effect of intensity saturation from global area enhancement and the perceptibility of color image is clearly improved.
机译:本文提出了通过使用FCM(模糊c均值)从多光谱图像聚类获得的分割彩色图像的局部增强。在这种情况下,具有大于3的带数的多光谱图像必须减少数据量以保持3的带数,以便与红色,绿色和蓝色图像的含义相对应。然后使用PCA(主成分分析)将原始的多光谱图像转换为PCA图像。信息多于原始图像95%的信息的前三个分量被指定为红色,绿色和蓝色图像,即RGB彩色图像。 FCM聚类分别应用于RGB彩色图像。这种方法称为PCA-FCM技术,即多光谱图像聚类。通过应用这种技术,分别由红色,绿色和蓝色图像组成的结果图像是分割图像。通过直方图均衡算法,基于多个聚类作为分割图像的局部区域增强的结果可以解决全局区域增强带来的强度饱和的影响,并且彩色图像的可感知性得到明显改善。

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