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A modular neural network vector predictor for predictive image coding

机译:用于预测图像编码的模块化神经网络矢量预测器

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In this paper, we present a modular neural network vector predictor that improves the predictive component of a predictive vector quantization (PVQ) scheme. The proposed vector prediction technique consists of five dedicated predictors (experts), where each expert predictor is optimized for a particular class of input vectors. An input vector is classified into one of five classes, based on its directional variances. One expert predictor is optimized for stationary blocks, and each of the other four expert predictors are optimized to predict horizontal, vertical, 45/spl deg/, and 135/spl deg/ diagonally oriented edge-blocks, respectively. An integrating unit is then used to select or combine the outputs of the experts in order to form the final output of the modular network. Therefore, no side information is transmitted to the receiver about the selected predictor or the integration of the predictors. Experimental results show that the proposed scheme gives an improvement of 1.7 dB over a single multilayer perceptron (MLP) predictor. Furthermore, if the information about the predictor selection is sent to the receiver, the improvement could be up to 3 dB over a single MLP predictor. The perceptual quality of the predicted images is also significantly improved.
机译:在本文中,我们提出了一种模块化的神经网络矢量预测器,可以改善预测矢量量化(PVQ)方案的预测组件。拟议的向量预测技术由五个专用预测器(专家)组成,其中每个专家预测器针对特定类别的输入向量进行了优化。根据输入向量的方向方差,将其分为五类之一。针对固定块优化了一个专家预测器,对其他四个专家预测器中的每一个进行了优化,分别预测了水平,垂直,45 / spl deg /和135 / spl deg /对角线定向的边缘块。然后使用一个集成单元来选择或组合专家的输出,以形成模块化网络的最终输出。因此,关于所选择的预测变量或预测变量的积分,没有辅助信息被发送到接收器。实验结果表明,所提出的方案比单个多层感知器(MLP)预测器提高了1.7 dB。此外,如果将有关预测变量选择的信息发送到接收器,则与单个MLP预测变量相比,改进可能高达3 dB。预测图像的感知质量也大大提高。

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