Extracting True Number of Clusters for Segmenting Image through Adaptive Finite Gaussian Mixture Model

M. M. Ahmad, Sajid Naeem, Syed Muhammad Rehman Habib
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Abstract

Knowing exact number of clusters in a digital image significantly facilitates in precisely clustering an image. This paper proposes a new technique for extracting exact number of clusters from grey scale images. It analyzes the contents of the input image and adaptively reserves one distinct cluster for one distinct grey value. The total count of the grey values found in an image determines the exact number of clusters. Based on the contents of image, this number of clusters keeps on changing from image to image. After obtaining this number, it is given as an input to Gaussian Mixture Model (GMM) which clusters the image.GMM works with finite number of clusters and forms mixture of various spectral densities contained in that image. The proposed method facilitates GMM to adapt itself according to the changing number of clusters. Therefore, the proposed model along with the inclusion of GMM, is named as Adaptive Finite Gaussian Mixture Model (AFGMM). The clustering performance of AFGMM is evaluated through Mean Squared Error (MSE) and Peak Signal to Noise Ratio (PSNR). Both of these performance measuring methods confirmed that exact number of clusters is essentially important for reliably analyzing an image.
基于自适应有限高斯混合模型的图像分割真簇数提取
了解数字图像中簇的确切数量,有助于精确地对图像进行聚类。提出了一种从灰度图像中精确提取聚类数目的新方法。它分析输入图像的内容,并自适应地为一个不同的灰度值保留一个不同的聚类。在图像中找到的灰度值的总数决定了簇的确切数量。基于图像的内容,这个簇的数量在不同的图像之间不断变化。得到该数值后,将其作为高斯混合模型(GMM)的输入,对图像进行聚类。GMM与有限数量的星团一起工作,形成图像中包含的各种光谱密度的混合物。该方法便于GMM根据聚类数量的变化进行自我调整。因此,该模型与GMM一起被命名为自适应有限高斯混合模型(AFGMM)。通过均方误差(MSE)和峰值信噪比(PSNR)来评价AFGMM的聚类性能。这两种性能测量方法都证实了准确的簇数对于可靠地分析图像是非常重要的。
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