卷积神经网络优化算法在宫颈癌宏图像分类中的应用研究

Suleiman Mustafa, Mohammed Dauda
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引用次数: 4

摘要

本研究采用深度学习中常用的基于卷积神经网络(CNN)的学习方法对优化算法进行评估,以提高宫颈癌检测的准确率。本研究中的卷积层由许多卷积核组成,这些卷积核用于计算不同的特征映射以表示输入。因此,通过堆叠网络层,设计了由卷积层、池化层和全连接层组成的模型体系结构。首先通过图像增强增加图像数据量来评估模型。此外,还选择了性能最优的超参数。最后,对随机梯度下降(SGD)、均方根传播(RMSprop)和自适应矩估计(Adam)优化器进行了分析,以确定哪种优化器可以提高宫颈癌分类网络的性能。
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Evaluating Convolution Neural Network optimization Algorithms for Classification of Cervical Cancer Macro Images
In this study, Convolution Neural Network (CNN)-based learning method, which is well-used in deep learning is applied to evaluate optimization algorithms for improved accuracy in cervix cancer detection. The convolutional layer in this study is made up of numerous convolution kernels which are used to compute different feature maps for representations of the inputs. As a result, the architecture of the model consisting of convolutional layers, pooling layers, and fully-connected layers is designed by stacking the network layers. The model is evaluated firstly by increasing the amount of image data through image augmentation. Furthermore, the hyper parameters for optimum performance are chosen. Finally, analysis is performed for Stochastic gradient descent (SGD), Root Mean Square Propagation (RMSprop) and Adaptive Moment Estimation (Adam) optimizers to determine which improves the networks performance for the classification of cervix cancer.
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