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Method and circuits for scaling images using neural networks

机译:使用神经网络缩放图像的方法和电路

摘要

An artificial neural network (ANN) based system that is adapted to process an input pattern to generate an output pattern related thereto having a different number of components than the input pattern. The system (26) is comprised of an ANN (27) and a memory (28), such as a DRAM memory, that are serially connected. The input pattern (23) is applied to a processor (22), where it can be processed or not (the most general case), before it is applied to the ANN and stored therein as a prototype (if learned). A category is associated with each stored prototype. The processor computes the coefficients that allow the determination of the estimated values of the output pattern, these coefficients are the components of a so-called intermediate pattern (24). Assuming the ANN has already learned a number of input patterns, when a new input pattern is presented to the ANN in the recognition phase, the category of the closest prototype is output therefrom and is used as a pointer to the memory. In turn, the memory outputs the corresponding intermediate pattern. The input pattern and the intermediate pattern are applied to the processor to construct the output pattern (25) using the coefficients. Typically, the input pattern is a block of pixels in the field of scaling images.
机译:基于人工神经网络(ANN)的系统,适用于处理输入模式以生成与之相关的输出模式,该模式具有与输入模式不同数量的组件。系统( 26 )包括一个ANN( 27 )和一个存储器( 28 ),例如DRAM存储器,它们是串行连接的连接的。将输入模式( 23 )应用于处理器( 22 ),在将其应用于ANN之前,是否可以对其进行处理(最常见的情况)并作为原型存储在其中(如果了解的话)。类别与每个存储的原型相关联。处理器计算允许确定输出模式估计值的系数,这些系数是所谓的中间模式( 24 )的组成部分。假设ANN已经学习了许多输入模式,则当在识别阶段将新的输入模式呈现给ANN时,从中输出最接近的原型的类别并用作指向存储器的指针。依次,存储器输出相应的中间模式。将输入模式和中间模式应用于处理器以使用系数构造输出模式( 25 )。通常,输入模式是缩放图像字段中的像素块。

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