Medical Image Annotation and Retrieval by Using Classification Techniques

M. M. Abdulrazzaq, Shahrul Azman Mohd, M. A. Fadhil
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引用次数: 5

Abstract

Given the rapid increase in the number of medical images, the process of image retrieval is considered an effective solution that can be used in the automatic search and storage of images. Content-based image retrieval is considerably affected by image classification, also called image annotation. The performance of image annotation is significantly affected by two main issues, namely, automatic extraction for image features and the annotation algorithm. This study addresses these issues by constructing a feature vector from the extraction of multi-level features. Two machine learning techniques are used for evaluation. The K-nearest neighbor and support vector machine methods of learning machine are employed to classify images. Image CLEF med2005 is used as the database for the classification approaches. Furthermore, principal component analysis is utilized thrice to decrease the length of the feature vector. Results demonstrate that the accuracy is significantly improved compared with those of similar classification approaches related to the same database.
基于分类技术的医学图像标注与检索
鉴于医学图像数量的快速增长,图像检索过程被认为是一种有效的解决方案,可以用于图像的自动搜索和存储。基于内容的图像检索在很大程度上受到图像分类(也称为图像标注)的影响。图像特征的自动提取和图像标注算法是影响图像标注性能的主要问题。本研究通过从提取的多层次特征中构造特征向量来解决这些问题。两种机器学习技术用于评估。采用学习机的k近邻和支持向量机方法对图像进行分类。使用CLEF med2005图像作为分类方法的数据库。此外,利用三次主成分分析来减小特征向量的长度。结果表明,与同类数据库的分类方法相比,该方法的准确率有了显著提高。
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