揭示深度神经网络中以前无法检测到的故障

Isaac Dunn, Hadrien Pouget, D. Kroening, T. Melham
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引用次数: 16

摘要

现有的测试DNN的方法通过将原始特征(例如图像像素值)限制在已知所需DNN输出的数据集示例的一小段距离内来解决oracle问题。但这限制了这些方法能够检测到的故障种类。在本文中,我们介绍了一种新的深度神经网络测试方法,它能够发现其他方法无法发现的深度神经网络中的故障。关键是,通过利用生成式机器学习,我们可以生成新的测试输入,这些输入在其高级特征(对于图像,这些特征包括物体形状、位置、纹理和颜色)上有所不同。我们证明,我们的方法能够检测故意注入的故障以及最先进的dnn中的新故障,并且在这两种情况下,现有方法都无法找到这些故障。
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Exposing previously undetectable faults in deep neural networks
Existing methods for testing DNNs solve the oracle problem by constraining the raw features (e.g. image pixel values) to be within a small distance of a dataset example for which the desired DNN output is known. But this limits the kinds of faults these approaches are able to detect. In this paper, we introduce a novel DNN testing method that is able to find faults in DNNs that other methods cannot. The crux is that, by leveraging generative machine learning, we can generate fresh test inputs that vary in their high-level features (for images, these include object shape, location, texture, and colour). We demonstrate that our approach is capable of detecting deliberately injected faults as well as new faults in state-of-the-art DNNs, and that in both cases, existing methods are unable to find these faults.
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