2023
DOI: 10.1002/smr.2550
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Efficient generation of valid test inputs for deep neural networks via gradient search

Abstract: The safety and robustness of deep neural networks (DNNs) are currently of great concern. Adequate testing is commonly an effective technique to ensure the software's trustworthiness. However, existing DNN testing methods generate many invalid test inputs, which inevitably brings increased computational overhead and reduces the efficiency of DNN testing. In this paper, we focus on testing task‐specific DNN and investigating diverse, valid and natural test input generation based on data augmentation techniques. … Show more

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