題名: Color Image Compression Through Rough PCA and Feed Forward Neural Networks
其他題名: 彩色影像壓縮使用概略主要元素及前向神經網路
作者: Lin, Jzau-Sheng
Shen, Tzu-Chiang
Huang, Yao-Te
Jean, Jia-Yuan
關鍵字: Color Image Compression
Rough Set
PCA
期刊名/會議名稱: 2001 NCS會議
摘要: In this paper color image compression using a hybrid neural-network model consisted of rough principal component analysis (RPCA) for separating an image into rough principal components and a feed forward network (FFN) to restore rough principal channels into the original information was proposed. In this system, a training vector is only consisted of two pixels with maximum and minimum gray values in a subdivided block for the input of RPCA net in the encoder. The proposed RPCA generates several channels with black and white image as the original color image but each sample represented by a scale value instead of a three-coordinate vector samples. Then these rough principal components are directly fed into FFN to train the synaptic weights between input and output neurons. Finally, the rough principal components and the synaptic weights are transmitted to the decoder. The experimental results show that the proposed RPCA and feed forward networks can obtain the promising reconstruction performance.
日期: 2006-10-17T07:01:27Z
分類:2001年 NCS 全國計算機會議

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