Dev tools: matlab
File size: 19 KB
Update: 2006-06-08
Downloads: 515
Describe:
Matlab realization image compression and the heavy
construction step (1) pair of picture carries on the wavelet to
decompose, obtains the first decomposition the low frequency
coefficient and the high frequency coefficient. (2) Retains the low
frequency coefficient, carries on to the high frequency coefficient
based on the nerve network vector quantification code, achieves the
compression. (3) To w returns to original state the low frequency
coefficient according to the code book and the return to original
state high frequency coefficient heavy composition which the high
frequency coefficient (4) basis retains likes
File list(Click to check if it's the file you need, and recomment it at the bottom):
matlab程序-基于小波变换与神经网络的图像压缩
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wav_sofm.m ...........................................\
小波变换&神经网络用于图像压缩.doc
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HTPDS.rar] - Bernhard code based on the rapid transform domain vector quantization encoding Matlab procedures
[
amethodforimagefusion.rar] - Paper, the method is to
image segmentation, wavelet de
composition are low frequency, high frequency components, then calculate the contrast of each pi
[
Wavelet-1.rar] - wavelet analysis ppt--Beijing University
[
SOM2.rar] - self-organizing neural networks for
image segmentation achieve Matlab
[
TP1.rar] -
image quantification
[
VQmatlab.rar] - VQ method of speaker recognition matlab code for vector quantization刚接触novice ready
[
ofwaveletimagecompression..Secondrar] - given Matlab environment in the source code, after the Machine, can achieve a wavelet transform of the second
image compression!
[
SMQTcode.rar] - under icip 2005 annual meeting of an article prepared by the Matlab procedures. Includes map results. Smqt use (continuous quantitative mean transform
[
susu.zip] - Arbitrary
composite number into prime number of procedures
[
CurveLab.zip] - curve fast matching Matlab procedures, including the full functions of FMM iteration, curvature matching, Lian dollar terms, very well. Recommended!