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Image Recognition Based on Combined Filters with Pseudoinverse Learning Algorithm

机译:基于组合滤波器与伪逆学习算法的图像识别

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摘要

Deep convolution neural network (CNN) is one of the most popular Deep neural networks (DNN). It has won state-of-the-art performance in many computer vision tasks. The most used method to train DNN is Gradient descent-based algorithm such as Backpropagation. However, backpropagation algorithm usually has the problem of gradient vanishing or gradient explosion, and it relies on repeated iteration to get the optimal result. Moreover, with the need to learn many convolutional kernels, the traditional convolutional layer is the main computational bottleneck of deep CNNs. Consequently, the current deep CNN is inefficient on computing resource and computing time. To solve these problems, we proposed a method which combines Gabor kernel, random kernel and pseudoinverse kernel, incorporating with pseudoinverse learning (PIL) algorithm to speed up DNN training processing. With the multiple fixed convolution kernels and pseudoinverse learning algorithm, it is simple and efficient to use the proposed method. The performance of the proposed model is tested on MNIST and C1FAR-10 datasets without using GPU. Experimental results show that our model is better than existing benchmark methods in speed, at the same time it has the comparative recognition accuracy.
机译:深度卷积神经网络(CNN)是最流行的深度神经网络(DNN)之一。它在许多计算机视觉任务中都获得了最先进的性能。训练DNN的最常用方法是基于梯度下降的算法,例如反向传播。然而,反向传播算法通常存在梯度消失或梯度爆炸的问题,并且它依赖于重复迭代来获得最佳结果。此外,由于需要学习许多卷积核,传统的卷积层是深度CNN的主要计算瓶颈。因此,当前的深度CNN在计算资源和计算时间方面效率低下。为了解决这些问题,我们提出了一种结合Gabor核,随机核和伪逆核的方法,并结合伪逆学习(PIL)算法来加快DNN训练过程。借助多个固定卷积核和伪逆学习算法,该方法简单有效。在不使用GPU的情况下,在MNIST和C1FAR-10数据集上测试了所提出模型的性能。实验结果表明,该模型在速度上优于现有的基准方法,同时具有比较的识别精度。

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