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Recognition of Blurred Images Using Multilayer Neural Network Based on Multi-valued Neurons

机译:基于多值神经元的多层神经网络模糊图像识别

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In this paper, we consider a problem of blurred image recognition using a multilayer neural network based on multi-valued neurons (MLMVN). Recognition of blurred images is a challenging problem because it is difficult or even impossible to find any relevant space of features for solving this problem in the spatial domain. The first crucial point of our approach is the use of the frequency domain as a feature space. Since Fourier phase spectrum of a blurred image remains almost unaffected, at least in the low frequency part, it is possible to use phases corresponding to the lowest frequencies as features for recognition. To preserve the physical nature of phase, it is very important to use a machine learning tool for its analysis that treats the phase properly. MLMVN is based on multi-valued neurons whose inputs and output are located on the unit circle and are determined exactly by phase. This approach makes it possible to recognize even heavily blurred images. Our solution works even for images so degraded they cannot be recognized using traditional image recognition techniques, furthermore, even visually
机译:在本文中,我们考虑了使用基于多值神经元(MLMVN)的多层神经网络进行图像模糊识别的问题。识别模糊图像是一个具有挑战性的问题,因为很难或什至不可能找到用于在空间域中解决此问题的特征的任何相关空间。我们方法的第一个关键点是将频域用作特征空间。由于至少在低频部分中模糊图像的傅立叶相位谱几乎不受影响,因此可以使用与最低频率相对应的相位作为识别特征。为了保留相的物理性质,使用机器学习工具对其进行分析以正确处理相非常重要。 MLMVN基于多值神经元,其输入和输出位于单位圆上,并且由相位精确确定。这种方法甚至可以识别严重模糊的图像。我们的解决方案甚至适用于图像质量如此之差的图像,即使使用传统的图像识别技术也无法识别它们,甚至在视觉上也无法识别

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