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Tumor demarcation by VQ based clustering and augmentation with KMCG and KFCG codebook generation algorithms

机译:基于VQ基于VQ的聚类和扩大与KMCG和KFCG码本生成算法的肿瘤划分

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Ultrasound (US) imaging is important modality to examine the clinical problems and also used as complimentary to the mammogram images to understand nature and shape of the breast tumor. Accurate and efficient segmentation method helps radiologists to understand and observe the volume of a tumor (growth or shrinkage). Inherent artifact present in US images, such as speckle, attenuation and shadows are major hurdles in achieving proper segmentation. Along with the accuracy, computational efficiency is also major concern in the segmentation process. Here, in this paper, VQ based clustering technique is proposed for US image segmentation with KMCG and KFCG as codebook generation algorithms. A novel technique of sequential cluster clubbing is used on clusters obtained from codebook generation algorithms and appropriate cluster has been selected as segmentation result. Besides original KMCG and KFCG, augmented KMCG and KFCG are also proposed for clustering with different block sizes. The results of all proposed methods are compared with each other and best result is selected based on two criteria's, one is computational efficiency and other is accuracy. Finally, best results amongst our methods are compared with results of original watershed and improved watershed transforms.
机译:超声(美国)成像是检查临床问题的重要态度,也用作乳房X线照片图像的互补,以了解乳腺肿瘤的性质和形状。准确和有效的分段方法有助于放射科医师理解和观察肿瘤的体积(生长或收缩)。美国图像中存在的固有伪像,例如散斑,衰减和阴影是实现适当分割的主要障碍。随着准确性,计算效率也是分割过程中的主要问题。这里,在本文中,提出了基于VQ的聚类技术,用于KMCG和KFCG作为码本生成算法的美国图像分割。在码本生成算法获得的群集中使用序列集群俱乐部的新技术,并且已选择适当的群集作为分段结果。除了原始的KMCG和KFCG之外,还提出了增强的KMCG和KFCG,以便以不同的块大小进行聚类。所有提出方法的结果都与彼此进行比较,基于两个标准选择最佳结果,一个是计算效率,其他是准确性。最后,我们的方法中的最佳结果与原始流域和改善的流域变换的结果进行了比较。

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