Semantic segmentation is a crucial component for perception in automated driving. Deep neural networks (DNNs) are commonly used for this task and they are usually trained on a closed set of object classes appearing in a closed operational domain. However, this is in contrast to the open world assumption in automated driving that DNNs are deployed to. Therefore, DNNs necessarily face data that they have never encountered previously, also known as anomalies, which are extremely safety-critical to properly cope with. In this work, we first give an overview about anomalies from an information-theoretic perspective. Next, we review research in detecting semantically unknown objects in semantic segmentation. We demonstrate that training for high entropy responses on anomalous objects outperforms other recent methods, which is in line with our theoretical findings. Moreover, we examine a method to assess the occurrence frequency of anomalies in order to select anomaly types to include into a model's set of semantic categories. We demonstrate that these anomalies can then be learned in an unsupervised fashion, which is particularly suitable in online applications based on deep learning.
翻译:深神经网络(DNNs)通常用于此任务,通常在封闭操作域内对一组封闭的物体类别进行培训。然而,这与DNNs部署到的自动驱动中的开放世界假设形成对照。因此,DNNs必然面临他们以前从未遇到过的数据,也被称为异常现象,这些异常现象对于正确应对极为安全至关重要。在这项工作中,我们首先从信息理论的角度来概述异常现象。接下来,我们审查在语义分割中探测未知的词义物体的研究。我们证明,对异常物体的高通气反应的培训优于其他最近的方法,这与我们的理论结论是一致的。此外,我们研究一种方法来评估异常现象的发生频率,以便选择异常类型,将其纳入一个模型的语义分类。我们证明,这些异常现象随后可以以非超强的方式学习,在基于深层次学习的网上应用中特别合适。