Open-Set Recognition: an Inexpensive Strategy to Increase DNN Reliability

G. Gavarini, Diego Stucchi, A. Ruospo, G. Boracchi, Ernesto Sánchez
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引用次数: 4

Abstract

Deep Neural Networks (DNNs) are nowadays widely used in low-cost accelerators, characterized by limited computational resources. These models, and in particular DNNs for image classification, are becoming increasingly popular in safety-critical applications, where they are required to be highly reliable. Unfortunately, increasing DNNs reliability without computational overheads, which might not be affordable in low-power devices, is a non-trivial task. Our intuition is to detect network executions affected by faults as outliers with respect to the distribution of normal network’s output. To this purpose, we propose to exploit Open-Set Recognition (OSR) techniques to perform Fault Detection in an extremely low-cost manner. In particuar, we analyze the Maximum Logit Score (MLS), which is an established Open-Set Recognition technique, and compare it against other well-known OSR methods, namely OpenMax, energy-based outof-distribution detection and ODIN. Our experiments, performed on a ResNet-20 classifier trained on CIFAR-10 and SVHN datasets, demonstrate that MLS guarantees satisfactory detection performance while adding a negligible computational overhead. Most remarkably, MLS is extremely convenient to conFigure and deploy, as it does not require any modification or re-training of the existing network. A discussion of the advantages and limitations of the analysed solutions concludes the paper.
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开放集识别:一种提高深度神经网络可靠性的廉价策略
深度神经网络(dnn)目前被广泛应用于低成本加速器,其特点是计算资源有限。这些模型,特别是用于图像分类的dnn,在要求高度可靠的安全关键应用中越来越受欢迎。不幸的是,在不增加计算开销的情况下提高dnn的可靠性是一项艰巨的任务,这在低功耗设备中可能负担不起。我们的直觉是检测受故障影响的网络执行,作为相对于正常网络输出分布的异常值。为此,我们提出利用开集识别(OSR)技术以极低的成本进行故障检测。特别地,我们分析了最大Logit分数(MLS),这是一种成熟的开放集识别技术,并将其与其他知名的OSR方法,即OpenMax,基于能量的分布外检测和ODIN进行了比较。我们在CIFAR-10和SVHN数据集上训练的ResNet-20分类器上进行的实验表明,MLS保证了令人满意的检测性能,同时增加了可以忽略不计的计算开销。最值得注意的是,MLS的配置和部署非常方便,因为它不需要对现有网络进行任何修改或重新训练。最后讨论了所分析的解决方案的优点和局限性。
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