Implementation of sparse representation and compression distance for finding image similarity

Dipali S. Matre, P. Mohod
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Abstract

Now a days the work on Sparse representation of signals has emerged as a major research part. It is well-known that the many natural signals such as image, music and video signals are represented sparsely if decomposed by using a proper choosen dictionaries for e.g. formed of wavelets bases. Sparse representation and compression distance is the representation that account for most or all the information of signal with linear combination of small number of elementary signal or atoms. A dictionary can be over complete or complete depending on the number of bases it contains is the same or greater than the dimensionality of the given image or signal. Traditionally, the use of predefined dictionaries has been common in sparse analysis. However, a more generalized approach is to learn the dictionary from the signal itself. Learnt dictionaries are known to outperform predefined dictionaries in several applications. In order to train a dictionary a large number of patches need to be extracted. For dictionary learning we used a K-SVD algorithm.
实现稀疏表示和压缩距离查找图像相似度
近年来,信号的稀疏表示已成为一个重要的研究方向。众所周知,对于图像、音乐和视频等自然信号,如果用适当选择的小波基构成的字典进行分解,可以得到稀疏的表示。稀疏表示和压缩距离是用少量的基本信号或原子的线性组合来表示占信号大部分或全部信息的表示。字典可以是过完备的,也可以是完备的,这取决于它所包含的基的数量是等于还是大于给定图像或信号的维数。传统上,在稀疏分析中使用预定义的字典是很常见的。然而,更广义的方法是从信号本身学习字典。众所周知,在一些应用程序中,学习字典的性能优于预定义字典。为了训练字典,需要提取大量的补丁。对于字典学习,我们使用K-SVD算法。
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