Morphological Transform for Image Compression

被引:0
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作者
Enrique Guzmán
Oleksiy Pogrebnyak
Cornelio Yañez
Luis Pastor Sanchez Fernandez
机构
[1] Universidad Tecnológica de la Mixteca,Centro de Investigación en Computación
[2] Instituto Politécnico Nacional,undefined
关键词
Traditional Method; Quantum Information; Processing Speed; Transformation Matrix; Discrete Wavelet;
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摘要
A new method for image compression based on morphological associative memories (MAMs) is presented. We used the MAM to implement a new image transform and applied it at the transformation stage of image coding, thereby replacing such traditional methods as the discrete cosine transform or the discrete wavelet transform. Autoassociative and heteroassociative MAMs can be considered as a subclass of morphological neural networks. The morphological transform (MT) presented in this paper generates heteroassociative MAMs derived from image subblocks. The MT is applied to individual blocks of the image using some transformation matrix as an input pattern. Depending on this matrix, the image takes a morphological representation, which is used to perform the data compression at the next stages. With respect to traditional methods, the main advantage offered by the MT is the processing speed, whereas the compression rate and the signal-to-noise ratio are competitive to conventional transforms.
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