Medical image retrieval using self-organising map on texture features

Shashwati Mishra, Mrutyunjaya Panda
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引用次数: 15

Abstract

The process of capturing, transfer and sharing of information in the form of digital images have become easier due to the use of advanced technologies. Retrieval of desired images from these huge collections of image databases is one of the popular research areas and has its applications in various fields. An image set consists of images containing objects of different colours, shapes, orientations and sizes. The surface texture of the object in an image may also vary from another object in a different image. These factors make the process of image retrieval a difficult one. In this paper, Self-Organising Map is applied on local texture features for organising the brain magnetic resonance images according to their similarity. The correlation among the pixels is considered for the retrieval of most similar images to the input query image. The experimental results obtained prove the effectiveness of the proposed method for medical images.

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基于纹理特征的自组织映射医学图像检索
由于先进技术的使用,以数字图像形式捕获、传输和共享信息的过程变得更加容易。从这些庞大的图像数据库中检索所需的图像是一个热门的研究领域,并在各个领域都有应用。图像集由包含不同颜色、形状、方向和大小的物体的图像组成。图像中对象的表面纹理也可以与不同图像中的另一个对象不同。这些因素使得图像检索成为一个困难的过程。本文将自组织映射应用于局部纹理特征上,根据相似度对脑磁共振图像进行组织。为了检索与输入查询图像最相似的图像,考虑了像素之间的相关性。实验结果证明了该方法对医学图像的有效性。
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