论文标题
颜色变化对深神经网络鲁棒性的影响
Impact of Colour Variation on Robustness of Deep Neural Networks
论文作者
论文摘要
深度神经网络(DNN)已显示出针对计算机视觉应用程序(例如图像分类,分割和对象检测)的最先进性能。尽管最近的进步表明他们在输入数据中对手动数字扰动的脆弱性,即对对抗性攻击。网络的准确性受其培训数据集的数据分布的显着影响。输入图像的颜色空间上的扭曲或扰动会生成分布数据的数据,这使网络更有可能错误地分类它们。在这项工作中,我们通过用27种不同的组合将其RGB颜色扭曲,提出了一个颜色变化数据集。我们工作的目的是研究颜色变化对DNN的性能的影响。我们对拟议数据集的几个最新DNN架构进行实验,结果显示颜色变化与准确性丧失之间存在显着相关性。此外,根据RESNET50体系结构,我们展示了最近提出的强大训练技术和策略的一些实验,例如Augmix,Revisit和Free Nartormizer在我们的拟议数据集中。实验结果表明,这些强大的训练技术可以改善深网对颜色变化的鲁棒性。
Deep neural networks (DNNs) have have shown state-of-the-art performance for computer vision applications like image classification, segmentation and object detection. Whereas recent advances have shown their vulnerability to manual digital perturbations in the input data, namely adversarial attacks. The accuracy of the networks is significantly affected by the data distribution of their training dataset. Distortions or perturbations on color space of input images generates out-of-distribution data, which make networks more likely to misclassify them. In this work, we propose a color-variation dataset by distorting their RGB color on a subset of the ImageNet with 27 different combinations. The aim of our work is to study the impact of color variation on the performance of DNNs. We perform experiments on several state-of-the-art DNN architectures on the proposed dataset, and the result shows a significant correlation between color variation and loss of accuracy. Furthermore, based on the ResNet50 architecture, we demonstrate some experiments of the performance of recently proposed robust training techniques and strategies, such as Augmix, revisit, and free normalizer, on our proposed dataset. Experimental results indicate that these robust training techniques can improve the robustness of deep networks to color variation.