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Testing DNN Image Classifiers for Confusion Bias Errors

机译:用于混淆和偏置错误的DNN图像分类器

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We found that many of the reported erroneous cases in popular DNN image classifiers occur because the trained models confuse one class with another or show biases towards some classes over others. Most existing DNN testing techniques focus on per-image violations, so fail to detect class-level confusions or biases. We developed a testing technique to automatically detect class-based confusion and bias errors in DNN-driven image classification software. We evaluated our implementation, DeepInspect, on several popular image classifiers with precision up to 100% (avg. 72.6%) for confusion errors, and up to 84.3% (avg. 66.8%) for bias errors.
机译:我们发现,许多在流行的DNN图像分类器中出现了许多错误的错误案例,因为训练有素的型号将一类与另一个阶级混淆或向某些课程展示偏见。大多数现有的DNN测试技术侧重于每个图像违规,因此无法检测到类级混淆或偏见。我们开发了一种测试技术,可以在DNN驱动的图像分类软件中自动检测基于类的混淆和偏置错误。我们评估了我们的实施,DeepInspect,在几种流行的图像分类器上,精度高达100%(AVG。72.6%),用于混淆误差,高达84.3%(AVG。66.8%)用于偏差误差。

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