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FACER: A Universal Framework for Detecting Anomalous Operation of Deep Neural Networks

机译:脸部:用于检测深神经网络的异常操作的普遍框架

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The detection of anomalies during the operation of deep neural networks (DNNs) is of essential importance in safety-critical applications, such as autonomous vehicles. In the field, classifiers may face rare environmental conditions, unknown objects, hardware failures, and other types of anomalies. Nevertheless, DNNs still predict arbitrarily high class probabilities in these cases and are unable to recognize out of-distribution operation modes. In this paper, we introduce FACER, an efficient and versatile framework that is trainable to detect various types of anomalies in pre-trained DNNs. FACER operates on compressed intermediate feature representations of the supervised network that can be easily obtained. We evaluate the detection of different input corruptions as well as outliers drawn from out-of-distribution datasets with CIFAR10, CIFAR-100 and SVHN classification models. The detection performance of our method is on par with other state-of-the art methods, while our method can be easier implemented and integrated into resource-constrained hardware systems.
机译:在深度神经网络(DNN)操作期间的异常检测是在安全关键应用中的必要重要性,例如自主车辆。在该领域,分类器可能面临稀有的环境条件,未知的物体,硬件故障和其他类型的异常。然而,DNN仍然在这些情况下预测任意高级概率,并且无法识别出分配的操作模式。在本文中,我们介绍了脸部,一种高效且多功能的框架,该框架是在预先训练的DNN中检测各种类型的异常。 FACER在可以容易地获得的监督网络的压缩中间特征表示上操作。我们评估了不同输入损坏的检测以及通过使用CIFAR10,CIFAR-100和SVHN分类模型的分发外部数据集绘制的异常值。我们的方法的检测性能与其他最先进的方法相同,而我们的方法可以更容易地实现并集成到资源受限的硬件系统中。

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