减少bp神经网络图像压缩收敛时间的快速反向传播神经网络算法

Omaima N. A. Al-Allaf
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引用次数: 20

摘要

人工神经网络特别是反向传播神经网络在图像处理中得到了广泛的应用。采用反向传播神经网络算法(BP)训练BP神经网络进行图像压缩/解压缩。BP需要很长时间才能训练出误差小的BP神经网络。因此,本研究设计了一种三层bp神经网络来构建图像压缩系统。采用快速反向传播神经网络算法(FBP)对设计的bp神经网络进行训练,尽可能缩短bp神经网络的训练时间(收敛时间)。许多技术被用于改进FBP在bp神经网络训练中的使用。这是通过改变输入层神经元的数量和隐藏层神经元的数量,使用不同的BPNN结构来实现的。同时,我们用不同的FBP参数对bp神经网络进行训练。最后,计算FBP的压缩比(CR)和峰值信噪比(PSNR)等结果,并与BP结果进行比较。从结果中,我们注意到FBP的使用通过减少图像压缩学习过程的收敛时间来改善bp神经网络的训练。
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Fast Backpropagation Neural Network algorithm for reducing convergence time of BPNN image compression
Artificial neural networks (ANNs) especially Backpropagation Neural Network (BPNN) was used largely in image processing. The backpropagation neural network algorithm (BP) was used for training the BPNN for image compression/decompression. The BP requires long time to train the BPNN with small error. Therefore, in this research, a three layered BPNN was designed for building image compression system. The Fast backpropagation neural network algorithm (FBP) was used for training the designed BPNN to reduce the training time (convergence time) of BPNN as possible as. Many techniques were used to improve the use of FBP for BPNN training. This is done by using different architecture of BPNN by changing the number of input layer neurons and number of hidden layer neurons. Also we trained the BPNN with different FBP parameters. Finally, FBP results such as compression ratio (CR) and peak signal to noise ratio (PSNR) are computed and compared with BP results. From the results, we noticed that the use of FBP improve the BPNN training by reducing the convergence time of image compression learning process.
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