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Improving the Performance of Backpropagation Neural Network Algorithm for Image Compression/Decompression System

机译:改进的反向传播神经网络算法在图像压缩/解压缩系统中的性能

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Problem statement: The problem inherent to any digital image is the large amount of bandwidth required for transmission or storage. This has driven the research area of image compression to develop algorithms that compress images to lower data rates with better quality. Artificial neural networks are becoming attractive in image processing where high computational performance and parallel architectures are required. Approach: In this research, a three layered Backpropagation Neural Network (BPNN) was designed for building image compression/decompression system. The Backpropagation neural network algorithm (BP) was used for training the designed BPNN. Many techniques were used to speed up and improve this algorithm by using different BPNN architecture and different values of learning rate and momentum variables. Results: Experiments had been achieved, the results obtained, such as Compression Ratio (CR) and Peak Signal to Noise Ratio (PSNR) are compared with the performance of BP with different BPNN architecture and different learning parameters. The efficiency of the designed BPNN comes from reducing the chance of error occurring during the compressed image transmission through analog or digital channel. Conclusion: The performance of the designed BPNN image compression system can be increased by modifying the network itself, learning parameters and weights. Practically, we can note that the BPNN has the ability to compress untrained images but not in the same performance of the trained images.
机译:问题陈述:任何数字图像固有的问题是传输或存储所需的大量带宽。这推动了图像压缩的研究领域,以开发出将图像压缩为质量更好的较低数据速率的算法。在需要高计算性能和并行架构的图像处理中,人工神经网络正变得越来越有吸引力。方法:在本研究中,设计了一个三层反向传播神经网络(BPNN)来构建图像压缩/解压缩系统。反向传播神经网络算法(BP)用于训练设计的BPNN。通过使用不同的BPNN体系结构以及学习率和动量变量的不同值,使用了许多技术来加速和改进该算法。结果:已完成实验,将获得的结果(如压缩率(CR)和峰值信噪比(PSNR))与具有不同BPNN体系结构和不同学习参数的BP的性能进行了比较。设计的BPNN的效率来自减少通过模拟或数字通道传输压缩图像期间发生错误的机会。结论:可以通过修改网络本身,学习参数和权重来提高设计的BPNN图像压缩系统的性能。实际上,我们可以注意到BPNN具有压缩未训练图像的能力,但性能却与训练图像不同。

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