Globally trained neural network architecture for image compression

L. Schweizer, G. Parladori, G. L. Sicuranza
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引用次数: 3

Abstract

The authors discuss the development of a coding system for image transmission based on block-transform coding and vector quantization. Moreover, a classification of the image blocks is performed in the spatial domain. An architecture incorporating both multilayered perceptron and self-organizing feature map neural networks and a block classification is considered to realize the image coding scheme. A framework is proposed to globally train the whole image coding system. The achieved results confirm the merits of such an image coding scheme. The neural network integration is performed with a single learning phase, allowing faster training and better performance of the image coding system.<>
用于图像压缩的全局训练神经网络架构
讨论了基于分块变换编码和矢量量化的图像传输编码系统的开发。此外,在空间域中对图像块进行分类。采用多层感知器、自组织特征映射神经网络和分块分类相结合的结构实现图像编码方案。提出了一种全局训练整个图像编码系统的框架。所取得的结果证实了这种图像编码方案的优点。神经网络集成在单个学习阶段进行,允许更快的训练和更好的图像编码系统性能。
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