We propose a new method for training convolutional neural networks which integrates reinforcement learning along with supervised learning and use ti for transfer learning for classification of glaucoma from colored fundus images. The training method uses hill climbing techniques via two different climber types, viz "random movment" and "random detection" integrated with supervised learning model though stochastic gradient descent with momentum (SGDM) model. The model was trained and tested using the Drishti GS and RIM-ONE-r2 datasets having glaucomatous and normal fundus images. The performance metrics for prediction was tested by transfer learning on five CNN architectures, namely GoogLenet, DesnseNet-201, NASNet, VGG-19 and Inception-resnet-v2. A fivefold classification was used for evaluating the perfroamnace and high sensitivities while high maintaining high accuracies were achieved. Of the models tested, the denseNet-201 architecture performed the best in terms of sensitivity and area under the curve (AUC). This method of training allows transfer learning on small datasets and can be applied for tele-ophthalmology applications including training with local datasets.
翻译:我们提出一种新的培训进化神经网络的方法,将强化学习与受监督的学习相结合,并使用技术传授,以便从彩色基金图像中对青光眼进行分类;培训方法采用两种不同的登山者类型,即“随机移动”和“随机探测”,与受监督的学习模式相结合,通过具有动力(SGDM)的随机梯度下降模型(SGDM)下降,对革命性神经网络进行培训和测试;该模型使用Drishti GS和RIM-ONE-R2数据集(有光学和普通基金图像)进行培训和测试;预测性能指标通过在五种CNN结构,即GooogLenet、DesenseNet-201、NASNet、VGG-19和Inptionion-resnet-v2.上传授学习技术来测试;在测试模型时,采用了五倍分分类,用于评估perfroamnace和高度敏感度,同时保持高敏度。在经过测试的模型中,密度Net-201结构在敏感度和正常基金图像中,最佳的灵敏度和领域是最佳的。这种预测(AUC)。这种培训方法可以将小型数据系统应用于当地数据系统应用。