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Color texture image segmentation based on neutrosophic set and wavelet transformation

机译:基于中智集和小波变换的彩色纹理图像分割

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摘要

Efficient and effective image segmentation is an important task in computer vision and pattern recognition. Since fully automatic image segmentation is usually very hard for natural images, interactive schemes with a few simple user inputs are good solutions. In this paper, we propose a fully automatic new approach for color texture image segmentation based on neutrosophic set (NS) and multiresolution wavelet transformation. It aims to segment the natural scene images, in which the color and texture of each region does not have uniform statistical characteristics. The proposed approach combines color information with the texture information on NS and wavelet domain for segmentation. At first, it transforms each color channel and the texture information of the input image into the NS domain independently. The entropy is defined and employed to evaluate the indeterminacy of the image in NS domain. Two operations, α-mean and β-enhancement operations are proposed to reduce the indeterminacy. Finally, the proposed method is employed to perform image segmentation using a β-K-means clustering. The determination of the cluster number K is carried out with cluster validity analysis. Two different segmentation evaluation criterions were used to determine the segmentations quality. Experiments are conducted on a variety of images, and the results are compared with those new existing segmentation algorithm. The experimental results demonstrate that the proposed approach can segment the color images automatically and effectively.
机译:高效有效的图像分割是计算机视觉和模式识别中的重要任务。由于对于自然图像而言,全自动图像分割通常非常困难,因此具有一些简单用户输入的交互式方案是很好的解决方案。在本文中,我们提出了一种基于中智集(NS)和多分辨率小波变换的全自动彩色纹理图像分割方法。它旨在分割自然场景图像,其中每个区域的颜色和纹理没有统一的统计特征。所提出的方法将颜色信息与NS和小波域上的纹理信息相结合进行分割。首先,它将每个颜色通道和输入图像的纹理信息独立转换为NS域。定义熵并将其用于评估NS域中图像的不确定性。为了减少不确定性,提出了两种方法,即α均值和β增强操作。最后,提出的方法被用于使用β-K-means聚类进行图像分割。聚类数K的确定通过聚类有效性分析来进行。使用两种不同的细分评估标准来确定细分质量。对各种图像进行了实验,并将结果与​​现有的新分割算法进行了比较。实验结果表明,该方法可以自动,有效地对彩色图像进行分割。

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