Tumor extraction and elimination of pectoral muscle based on hidden Markov and region growing: Applied based MIAS

Soukaina El Idrissi El Kaitouni, A. Abbad, H. Tairi
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引用次数: 1

Abstract

In this article, we propose an automatic method for the detection and extraction of the tumor on mammogram images. Most methods of detection of a tumor require the extraction of a large number of texture features from multiple calculations. The study first examines a technique of preprocessing images to obtain the Otsu thresholding method to eliminate items that do not belong in. After performing the thresholding, we estimate the number of base classes of technical LBP (Local Binary Pattern). To automate the initialization task, the classification proposed by applying dynamic k-means and improve the classes obtained by the method of Markov. Then we calculate the correlation between these classes and the original image, we deduce the class that contains the tumor and muscle pectoral. Finally, it uses the method of growing the region to eliminate pectoral muscle. The result obtained by this approach shows the quality and accuracy of extracting parts of the tumor compared to existing approaches in the literature.
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基于隐马尔可夫和区域生长的胸肌肿瘤提取与消除:基于MIAS的应用
在本文中,我们提出了一种自动检测和提取乳房x线照片上肿瘤的方法。大多数检测肿瘤的方法需要从多次计算中提取大量的纹理特征。本研究首先探讨了一种预处理图像的技术,以获得Otsu阈值法来消除不属于的项目。在执行阈值分割后,我们估计了技术LBP(局部二值模式)的基类数量。为了实现初始化任务的自动化,提出了采用动态k-means的分类方法,并对马尔可夫方法得到的分类进行了改进。然后我们计算这些类别与原始图像之间的相关性,我们推断出包含肿瘤和胸肌的类别。最后,它使用生长区域的方法来消除胸肌。与文献中已有的方法相比,该方法获得的结果显示了肿瘤部分提取的质量和准确性。
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