Science and Research Department, Moscow Technical University of Communications and Informatics, 111024 Moscow, Russia.
Sensors (Basel). 2022 Feb 6;22(3):1241. doi: 10.3390/s22031241.
The problem surrounding convolutional neural network robustness and noise immunity is currently of great interest. In this paper, we propose a technique that involves robustness estimation and stability improvement. We also examined the noise immunity of convolutional neural networks and estimated the influence of uncertainty in the training and testing datasets on recognition probability. For this purpose, we estimated the recognition accuracies of multiple datasets with different uncertainties; we analyzed these data and provided the dependence of recognition accuracy on the training dataset uncertainty. We hypothesized and proved the existence of an optimal (in terms of recognition accuracy) amount of uncertainty in the training data for neural networks working with undefined uncertainty data. We have shown that the determination of this optimum can be performed using statistical modeling. Adding an optimal amount of uncertainty (noise of some kind) to the training dataset can be used to improve the overall recognition quality and noise immunity of convolutional neural networks.
目前,卷积神经网络的鲁棒性和抗噪声能力问题引起了极大的关注。在本文中,我们提出了一种涉及鲁棒性估计和稳定性改进的技术。我们还研究了卷积神经网络的抗噪声能力,并估计了训练和测试数据集的不确定性对识别概率的影响。为此,我们估计了具有不同不确定性的多个数据集的识别准确率;我们对这些数据进行了分析,并提供了识别准确率对训练数据集不确定性的依赖关系。我们假设并证明了在处理未定义不确定性数据的神经网络中,训练数据存在最佳(在识别准确率方面)不确定性量。我们已经表明,可以使用统计建模来确定这个最优值。向训练数据集添加最佳数量的不确定性(某种噪声)可以提高卷积神经网络的整体识别质量和抗噪声能力。