Medical image segmentation using multi resolution histogram

T. Ganga, V. Karthikeyani
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引用次数: 3

Abstract

An efficient algorithm for Multi resolution medical image segmentation is presented. The main objective of medical image segmentation is to extract the anatomic structures and its characteristics with respect to some input features. There exists various methodologies for medical image segmentation but struggles with missing features due to the noise presence in the medical images. We propose a new technique to increase the resolution of the medical images to identify the features and edges of the medical images. We use multi-class Histogram based segmentation method to preserve the edges and increase the resolution of the medical images. With the proposed technique the memory and time consumption is hugely reduced, which is an important factor in the medical field and produces good results.
基于多分辨率直方图的医学图像分割
提出了一种高效的多分辨率医学图像分割算法。医学图像分割的主要目的是根据某些输入特征提取解剖结构及其特征。医学图像分割的方法多种多样,但由于医学图像中存在噪声而导致特征缺失。提出了一种提高医学图像分辨率的新方法来识别医学图像的特征和边缘。我们采用基于多类直方图的分割方法来保持医学图像的边缘,提高图像的分辨率。该技术极大地减少了记忆和时间消耗,这是医疗领域的一个重要因素,并取得了良好的效果。
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