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首页> 外文期刊>Journal of Intelligent Learning Systems and Applications >New Approaches for Image Compression Using Neural Network
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New Approaches for Image Compression Using Neural Network

机译:神经网络图像压缩的新方法

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An image consists of large data and requires more space in the memory. The large data results in more transmission time from transmitter to receiver. The time consumption can be reduced by using data compression techniques. In this technique, it is possible to eliminate the redundant data contained in an image. The compressed image requires less memory space and less time to transmit in the form of information from transmitter to receiver. Artificial neural net- work with feed forward back propagation technique can be used for image compression. In this paper, the Bipolar Coding Technique is proposed and implemented for image compression and obtained the better results as compared to Principal Component Analysis (PCA) technique. However, the LM algorithm is also proposed and implemented which can acts as a powerful technique for image compression. It is observed that the Bipolar Coding and LM algorithm suits the best for image compression and processing applications.
机译:图像包含大量数据,并且需要更多的内存空间。大数据导致从发射机到接收机的更多传输时间。通过使用数据压缩技术可以减少时间消耗。在该技术中,可以消除图像中包含的冗余数据。压缩的图像需要更少的存储空间和更少的时间以信息的形式从发射机发送到接收机。带有前馈传播技术的人工神经网络可用于图像压缩。本文提出并实施了双极性编码技术进行图像压缩,与主成分分析(PCA)技术相比,获得了更好的结果。但是,LM算法也被提出并实现,它可以作为一种强大的图像压缩技术。可以看出,双极性编码和LM算法最适合图像压缩和处理应用。

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