Enhancement of CT Brain Images Classification Based on Deep Learning Network with Adaptive Activation Functions

Roxana ZahediNasab, H. Mohseni
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引用次数: 2

Abstract

Deep neural networks are one of the most important branches of machine learning that have been recently used in many fields of pattern recognition and machine vision applications successfully. One of the most famous networks in this area is convolutional neural networks which are biologically inspired variants of multi-layer perceptions. In these networks, activation function plays a significant role especially when the data come in different scales. Recently, there is an interest to adaptive activation functions which adapts their parameters to the input data during network training process. Therefore, in this paper, inspired from a successful convolutional neural network tuned for medical image classification, we have investigated the effect of applying adaptive activation functions in a modified convolutional network by combining basic activation functions in linear (mixed) and nonlinear (gated) ways. The effectiveness of using these adaptive functions is shown on a CT brain images dataset (as a complex medical dataset) and the well-known MNIST hand-written digits dataset. The done experiments show that the classification accuracy of the proposed network with adaptive activation functions is higher compared to the ones using basic activation functions.
基于自适应激活函数的深度学习网络增强CT脑图像分类
深度神经网络是机器学习最重要的分支之一,近年来已成功地应用于模式识别和机器视觉的许多领域。该领域最著名的网络之一是卷积神经网络,它是多层感知的生物学启发变体。在这些网络中,激活函数起着重要的作用,特别是当数据来自不同的尺度时。近年来,人们对自适应激活函数产生了浓厚的兴趣,该函数可以在网络训练过程中根据输入的数据进行参数调整。因此,在本文中,受一个成功的用于医学图像分类的卷积神经网络的启发,我们通过线性(混合)和非线性(门控)方式组合基本激活函数,研究了在改进的卷积网络中应用自适应激活函数的效果。使用这些自适应函数的有效性在CT脑图像数据集(作为一个复杂的医学数据集)和著名的MNIST手写数字数据集上得到了证明。实验表明,与使用基本激活函数的网络相比,使用自适应激活函数的网络的分类准确率更高。
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