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Non-Linear Image Representation Based on IDP with NN

机译:基于神经网络的IDP的非线性图像表示

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In this paper is offered a method for non-linear still image representation based on pyramidal decomposition with a neural network. This approach is developed by analogy with the hypothesis for the way humans do image recognition using consecutive approximations with increasing similarity. A hierarchical decomposition, named Inverse Difference Pyramid (IDP), is used for the image representation. The approximations in the consecutive decomposition layers are represented by the neurons in the hidden layers of the neural networks (NN). This approach ensures efficient description of the processed images and as a result -a high compression ratio. This new way for image representation is suitable for various applications (efficient compression, multi-layer search in image databases, etc.).
机译:本文提供了一种基于神经网络的金字塔分解的非线性静态图像表示方法。这种方法是通过与假设相似的方式开发的,该假设是人类使用相似度不断增加的连续逼近来进行图像识别的方式。图像分解使用名为反差金字塔(IDP)的分层分解。连续分解层中的近似值由神经网络(NN)的隐藏层中的神经元表示。这种方法确保了对已处理图像的有效描述,从而确保了高压缩率。这种新的图像表示方式适用于各种应用(高效压缩,图像数据库中的多层搜索等)。

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