Leveraging Test-Time Consensus Prediction for Robustness against Unseen Noise

Anindya Sarkar, Anirban Sarkar, V. Balasubramanian
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引用次数: 3

Abstract

We propose a method to improve DNN robustness against unseen noisy corruptions, such as Gaussian noise, Shot Noise, Impulse Noise, Speckle noise with different levels of severity by leveraging ensemble technique through a consensus based prediction method using self-supervised learning at inference time. We also propose to enhance the model training by considering other aspects of the issue i.e. noise in data and better representation learning which shows even better generalization performance with the consensus based prediction strategy. We report results of each noisy corruption on the standard CIFAR10-C and ImageNet-C benchmark which shows significant boost in performance over previous methods. We also introduce results for MNIST-C and TinyImagenet-C to show usefulness of our method across datasets of different complexities to provide robustness against unseen noise. We show results with different architectures to validate our method against other baseline methods, and also conduct experiments to show the usefulness of each part of our method.
利用测试时间一致性预测对不可见噪声的鲁棒性
我们提出了一种方法,通过在推理时使用自监督学习的基于共识的预测方法,利用集成技术提高DNN对看不见的噪声破坏的鲁棒性,如高斯噪声、散点噪声、脉冲噪声和不同严重程度的斑点噪声。我们还建议通过考虑问题的其他方面来增强模型训练,例如数据中的噪声和更好的表示学习,通过基于共识的预测策略显示出更好的泛化性能。我们报告了标准CIFAR10-C和ImageNet-C基准测试中每种噪声损坏的结果,这些结果显示比以前的方法性能有显着提高。我们还介绍了MNIST-C和TinyImagenet-C的结果,以显示我们的方法在不同复杂性的数据集上的实用性,以提供对看不见的噪声的鲁棒性。我们展示了不同架构的结果,以对照其他基准方法验证我们的方法,并且还进行了实验,以显示我们方法的每个部分的有用性。
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