Low-loss image compression techniques for cutting tool images: a comparative study of compression quality measures
This work accomplishes a comparative study between two distinct image compression techniques, namely the Lifting technique and the Principal Components Analysis (PCA), in order to determine what of these two approaches is more appropriate for cutting tool wear images analysis. Lifting and Principal...
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Universidade Nove de Julho
2010-01-01
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doaj-38999e85b3024886be6229be299589822020-11-25T02:46:53ZporUniversidade Nove de JulhoExacta1678-54281983-93082010-01-0182225235Low-loss image compression techniques for cutting tool images: a comparative study of compression quality measuresFabio Henrique PereiraElesandro BaptistaNivaldo Lemos CoppiniRafael do Espírito SantoAdemir João de OliveiraThis work accomplishes a comparative study between two distinct image compression techniques, namely the Lifting technique and the Principal Components Analysis (PCA), in order to determine what of these two approaches is more appropriate for cutting tool wear images analysis. Lifting and Principal Components Analysis were applied in original images of a cutting tool for producing a low resolution version, while keeping the more important details of the image. The low-loss image compression quality provided by these techniques was expressed in terms of the compression factor (¿), the Mean Square Error (MSE) and the Peak Signal-to-Noise Rate (PSNR) provided by the image compression process. The tests were accomplished using the high-performance language for technical computing MATLAB®, and the results shown that the PCA technique presented the best values of PSNR with low compression rates. However, with high values of compression rates the lifting technique gave the highest PSNR.http://www.redalyc.org/articulo.oa?id=81016917012 |
collection |
DOAJ |
language |
Portuguese |
format |
Article |
sources |
DOAJ |
author |
Fabio Henrique Pereira Elesandro Baptista Nivaldo Lemos Coppini Rafael do Espírito Santo Ademir João de Oliveira |
spellingShingle |
Fabio Henrique Pereira Elesandro Baptista Nivaldo Lemos Coppini Rafael do Espírito Santo Ademir João de Oliveira Low-loss image compression techniques for cutting tool images: a comparative study of compression quality measures Exacta |
author_facet |
Fabio Henrique Pereira Elesandro Baptista Nivaldo Lemos Coppini Rafael do Espírito Santo Ademir João de Oliveira |
author_sort |
Fabio Henrique Pereira |
title |
Low-loss image compression techniques for cutting tool images: a comparative study of compression quality measures |
title_short |
Low-loss image compression techniques for cutting tool images: a comparative study of compression quality measures |
title_full |
Low-loss image compression techniques for cutting tool images: a comparative study of compression quality measures |
title_fullStr |
Low-loss image compression techniques for cutting tool images: a comparative study of compression quality measures |
title_full_unstemmed |
Low-loss image compression techniques for cutting tool images: a comparative study of compression quality measures |
title_sort |
low-loss image compression techniques for cutting tool images: a comparative study of compression quality measures |
publisher |
Universidade Nove de Julho |
series |
Exacta |
issn |
1678-5428 1983-9308 |
publishDate |
2010-01-01 |
description |
This work accomplishes a comparative study between two distinct image compression techniques, namely the Lifting technique and the Principal Components Analysis (PCA), in order to determine what of these two approaches is more appropriate for cutting tool wear images analysis. Lifting and Principal Components Analysis were applied in original images of a cutting tool for producing a low resolution version, while keeping the more important details of the image. The low-loss image compression quality provided by these techniques was expressed in terms of the compression factor (¿), the Mean Square Error (MSE) and the Peak Signal-to-Noise Rate (PSNR) provided by the image compression process. The tests were accomplished using the high-performance language for technical computing MATLAB®, and the results shown that the PCA technique presented the best values of PSNR with low compression rates. However, with high values of compression rates the lifting technique gave the highest PSNR. |
url |
http://www.redalyc.org/articulo.oa?id=81016917012 |
work_keys_str_mv |
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