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Fault Tolerant Deep Neural Networks for Detection of Unrecognizable Situations

机译:容错深度神经网络,用于检测无法识别的情况

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Deep Neural Networks are achieving great success in various fields. However, their use remains limited to non critical applications because their behavior is unpredictable and unsafe. In this paper we propose some fault tolerant approaches based on diversifying learning in order to improve DNNs dependability and particularly safety. Our main goal is to increase trust in the outcome of deep learning mechanisms by recognizing the unlearned inputs and preventing misclassification.
机译:深度神经网络在各个领域都取得了巨大的成功。但是,它们的使用仍然限于非关键应用程序,因为它们的行为不可预测且不安全。在本文中,我们提出了一些基于多元化学习的容错方法,以提高DNN的可靠性,尤其是安全性。我们的主要目标是通过识别未学习的输入并防止分类错误来增强对深度学习机制结果的信任。

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