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A modified frequency domain cross correlation implemented in MATLAB for fast sub-image detection using neural networks

机译:在MATLAB中实现的经修改的频域互相关,可使用神经网络快速检测子图像

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Recently, neural networks have shown good results for pattern detection. In our previous papers by El-Bakry et al., a fast algorithm for pattern detection using neural networks was presented. Such algorithm was designed based on cross correlation in the frequency domain between the input image and the weights of neural networks. In practical implementation using MATLAB, image conversion into symmetric shape was established so that fast neural networks can give the same results as conventional neural networks. Another configuration of symmetry was suggested to improve the speed up ratio. In this paper, our previous algorithm for fast neural networks is developed. The frequency domain cross correlation is modified in order to compensate for the symmetric condition which is required by the input image. Two new ideas are introduced to modify the cross correlation algorithm. Both methods accelerate the speed of the fast neural networks as there is no need for converting the input image into symmetric one as previous. Theoretical and practical results show that both approaches provide faster speed up ratio than the previous algorithm.
机译:最近,神经网络已显示出用于模式检测的良好结果。在我们之前的El-Bakry等人的论文中,提出了一种使用神经网络进行模式检测的快速算法。这种算法是基于输入图像和神经网络权重之间的频域互相关而设计的。在使用MATLAB的实际实现中,建立了将图像转换为对称形状的功能,以便快速神经网络可以提供与常规神经网络相同的结果。建议使用另一种对称结构来提高加速比。在本文中,我们开发了先前的快速神经网络算法。修改频域互相关以补偿输入图像所需的对称条件。引入了两个新的思想来修改互相关算法。两种方法都加快了快速神经网络的速度,因为不需要像以前那样将输入图像转换为对称图像。理论和实践结果表明,这两种方法都比以前的算法提供了更快的加速比。

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