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Optimization of CNN through Novel Training Strategy for Visual Classification Problems

机译:通过新颖的视觉分类问题进行CNN优化CNN

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摘要

The convolution neural network (CNN) has achieved state-of-the-art performance in many computer vision applications e.g., classification, recognition, detection, etc. However, the global optimization of CNN training is still a problem. Fast classification and training play a key role in the development of the CNN. We hypothesize that the smoother and optimized the training of a CNN goes, the more efficient the end result becomes. Therefore, in this paper, we implement a modified resilient backpropagation (MRPROP) algorithm to improve the convergence and efficiency of CNN training. Particularly, a tolerant band is introduced to avoid network overtraining, which is incorporated with the global best concept for weight updating criteria to allow the training algorithm of the CNN to optimize its weights more swiftly and precisely. For comparison, we present and analyze four different training algorithms for CNN along with MRPROP, i.e., resilient backpropagation (RPROP), Levenberg–Marquardt (LM), conjugate gradient (CG), and gradient descent with momentum (GDM). Experimental results showcase the merit of the proposed approach on a public face and skin dataset.
机译:卷积神经网络(CNN)在许多计算机视觉应用中实现了最先进的性能,例如,分类,识别,检测等,但是,CNN训练的全球优化仍然是一个问题。快速分类和培训在CNN的发展中发挥着关键作用。我们假设更顺畅并优化了CNN的训练,最终结果越高。因此,在本文中,我们实现了修改的弹性反向化(MRProp)算法,以提高CNN培训的收敛性和效率。特别地,引入容差频带以避免网络过度训练,其与重量更新标准的全局最佳概念结合在一起,以允许CNN的训练算法更快地迅速地优化其权重。为了比较,我们现在和分析CNN四个不同的训练算法与MRPROP沿,即,弹性反向传播(RPROP),列文伯格 - 马夸尔特(LM),共轭梯度(CG),和与动量(GDM)梯度下降。实验结果展示了在公共面部和皮肤数据集中所提出的方法的优点。

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