首页> 外文会议>Computer Graphics Imaging and Visualization (CGIV), 2007 >Hopfield neural network (hnn) improvement for color image recognition using multi-bitplane and multi-connect architecture
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Hopfield neural network (hnn) improvement for color image recognition using multi-bitplane and multi-connect architecture

机译:使用多位平面和多连接架构的彩色图像识别Hopfield神经网络(hnn)的改进

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A new approach of using HNN with multi-connect architecture in color image recognition has been produced in this work. HNN consists of a single layer of fully connected processing elements, which is described as an associative memory. However, HNN is useless in dealing with data not in bipolar representation. As such, HNN failed to work directly with color images, unless, another way is produced in order to pave the way for expected right recognition. In RGB bands each represents different values of brightness, still it is possible to assume for 8-bit RGB image consists of 8-layers of binaries, or bipolar. In such way, each layer is as a single binary image for HNN. The results have shown the possibility and usefulness of HNN in RGB image recognition. Besides, the possibility of using wide number of RGB images stored in the net memory without sensed affection on the final results.
机译:这项工作提出了一种在彩色图像识别中使用具有多连接架构的HNN的新方法。 HNN由完全连接的处理元素的单层组成,这被描述为关联存储器。但是,HNN在处理非双极表示形式的数据时没有用。这样,HNN无法直接处理彩色图像,除非产生了另一种方法,以便为预期的正确识别铺平道路。在RGB波段中,每个波段代表不同的亮度值,对于8位RGB图像,还可以假定由8层二进制或双极层组成。以这种方式,每一层都作为用于HNN的单个二进制图像。结果表明HNN在RGB图像识别中的可能性和实用性。此外,可以使用存储在网络存储器中的大量RGB图像,而不会影响最终结果。

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