Image compression in medical image databases using set redundancy

K. Karadimitriou, M. Fenstermacher
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引用次数: 4

Abstract

Summary form only given. Image compression is achieved by eliminating various types of redundancy that exist in the pixel values. Individual gray-scale images contain interpixel, psychovisual, and coding redundancy. However, sets of similar images contain an additional type of redundancy: the set redundancy. Set redundancy is the inter-image redundancy that results from the common information found in more than one image in the set. Set redundancy can be used to improve compression. Medical imaging is one of the best application areas for the enhanced compression model (ECM) and the set redundancy compression (SRC) methods. Medical images classified by modality and type of exam are very similar to one another, because of the standard procedures used in radiology. Therefore, medical image databases contain large amounts of set redundancy, which the ECM can efficiently reduce. Tests performed on a test database of CT brain scans showed significant compression improvement when the images were pre-processed with SRC methods to reduce set redundancy. The images were obtained from a random population of patients, and the tests were performed with the standard compression techniques used in radiology: Huffman encoding, arithmetic coding, and Lempel-Ziv compression. The best improvement resulted from combining the min-max predictive method with Huffman compression. In our tests we used genetic algorithms to identify the sets of similar images in the image database.
基于集冗余的医学图像数据库图像压缩
只提供摘要形式。图像压缩是通过消除存在于像素值中的各种冗余来实现的。单个灰度图像包含像素间冗余、心理视觉冗余和编码冗余。然而,相似图像的集合包含一种额外的冗余:集合冗余。集合冗余是指在集合中多个图像中发现的公共信息所产生的图像间冗余。设置冗余可以用来提高压缩。医学影像是增强压缩模型(ECM)和集冗余压缩(SRC)方法的最佳应用领域之一。由于放射学中使用的标准程序,按模式和检查类型分类的医学图像彼此非常相似。因此,医学图像数据库中包含大量的集合冗余,ECM可以有效地减少这些冗余。在CT脑部扫描的测试数据库上进行的测试表明,当使用SRC方法对图像进行预处理以减少集合冗余时,压缩效果显著改善。图像是从随机患者群体中获得的,并使用放射学中使用的标准压缩技术进行测试:霍夫曼编码、算术编码和Lempel-Ziv压缩。将最小-最大预测方法与霍夫曼压缩相结合,改进效果最好。在我们的测试中,我们使用遗传算法来识别图像数据库中的相似图像集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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