Deep Learning (DL) is one of the most popular research topics in machine learning and DL-driven image recognition systems have developed rapidly. Recent research has employed metamorphic testing (MT) to detect misclassified images. Most of them discuss metamorphic relations (MR), with limited attention given to which regions should be transformed. We focus on the fact that there are sensitive regions where even small transformations can easily change the prediction results and propose an MT framework that efficiently tests for regions prone to misclassification by transforming these sensitive regions. Our evaluation demonstrated that the sensitive regions can be specified by Explainable AI (XAI) and our framework effectively detects faults.
翻译:深度学习是机器学习中最受欢迎研究课题之一,基于深度学习的图像识别系统发展迅速。最近的研究采用了变形测试(MT)来检测分类错误的图像。其中大部分讨论了变形关系(MR),但对于应该进行何种区域变换的研究却有限。我们着重于敏感区域的存在,即使进行微小变换也容易改变预测结果,因此提出了一种启发式测试框架,通过转换这些敏感区域高效地检测容易分类错误的区域。我们的评估表明,可解释 AI(XAI)可以明确指定敏感区域,而我们的框架有效地检测了错误。