DCT、Walsh、Haar和Hartley变换在全图像和部分系数图像分类中的性能评价

H. B. Kekre, T. Sarode, F. Ansari
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引用次数: 6

摘要

近年来,由于静态和动态图像在医学、工程、大众媒体和地理信息系统等生动领域的应用越来越广泛,图像处理工具和技术得到了不断的关注和认可。一种特殊的图像处理技术——“图像分类”在上述领域中占有举足轻重的地位。图像分类器是一个系统,它接受查询图像作为部分或整体形式的输入,将其与存储的类之一关联,并返回其类标签/编号作为输出。图像分类有助于管理大量的图像数据,并使用一些相似度量,如欧几里得距离(Ed),均方误差(MSE)等,方便检索感兴趣的图像。本文采用离散余弦变换、Walsh变换、Haar变换和Hartley变换,提出了一种广泛应用的图像分类技术,该技术利用偏系数特征向量的概念。采用尺寸为8×8、16×16、32×32、64×64的偏系数。欧几里得距离和均方差用于相似性度量。该系统使用两个数据库,每个数据库包含500张图像,分布在10个不同的类别中。比较了对原始图像和部分图像进行各种变换的结果。
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Performance evaluation of DCT, Walsh, Haar and Hartley transforms on whole images and partial coefficients in Image Classification
In recent years image processing tools and techniques are gaining continuous attention and recognition due to augmented usage of still and motion images in vivid fields like medical science, engineering, mass-media and GIS. Special category of image processing technique called “Image Classification” has got pivotal position in all the above said fields. An image classifier is a system which accepts query image as an input in part or whole form associates it with one of the stored classes and returns its class label/number as an output. Image classification helps in managing large amount of image data and easy retrieval of image(s) of interest using some kind of similarity measures like Euclidean Distance(Ed), Mean Square Error (MSE) etc. This paper presents broadly used image classification technique using the concept of feature vectors of partial coefficients using Discrete Cosine, Walsh and Haar and Hartley transforms. Partial coefficients of sizes 8×8, 16×16, 32×32 and 64×64 are used. Euclidian distance and MSE are used for similarity measures. The system uses two databases of 500 images each spread over 10 different categories. The results of various transforms on original and the portions of images are compared.
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