Runtime monitoring provides a more realistic and applicable alternative to verification in the setting of real neural networks used in industry. It is particularly useful for detecting out-of-distribution (OOD) inputs, for which the network was not trained and can yield erroneous results. We extend a runtime-monitoring approach previously proposed for classification networks to perception systems capable of identification and localization of multiple objects. Furthermore, we analyze its adequacy experimentally on different kinds of OOD settings, documenting the overall efficacy of our approach.
翻译:运行时间监测为在工业中使用的真正神经网络的设置中进行核查提供了更现实和适用的替代方法,对于发现分配外的投入特别有用,因为网络没有经过培训,因此可能产生错误的结果;我们将先前为分类网络提议的运行时间监测方法扩大到能够识别和定位多个物体的感知系统;此外,我们还对不同类型OOOD设置进行实验分析,记录我们方法的总体效力,分析其是否足够。