Object type classification for automotive radar has greatly improved with recent deep learning (DL) solutions, however these developments have mostly focused on the classification accuracy. Before employing DL solutions in safety-critical applications, such as automated driving, an indispensable prerequisite is the accurate quantification of the classifiers' reliability. Unfortunately, DL classifiers are characterized as black-box systems which output severely over-confident predictions, leading downstream decision-making systems to false conclusions with possibly catastrophic consequences. We find that deep radar classifiers maintain high-confidences for ambiguous, difficult samples, e.g. small objects measured at large distances, under domain shift and signal corruptions, regardless of the correctness of the predictions. The focus of this article is to learn deep radar spectra classifiers which offer robust real-time uncertainty estimates using label smoothing during training. Label smoothing is a technique of refining, or softening, the hard labels typically available in classification datasets. In this article, we exploit radar-specific know-how to define soft labels which encourage the classifiers to learn to output high-quality calibrated uncertainty estimates, thereby partially resolving the problem of over-confidence. Our investigations show how simple radar knowledge can easily be combined with complex data-driven learning algorithms to yield safe automotive radar perception.
翻译:汽车雷达的物体类型分类随着最近的深层次学习(DL)解决方案而大为改善,然而,这些发展大多侧重于分类准确性。在使用安全关键应用(如自动驾驶)的DL解决方案之前,一个不可或缺的先决条件是准确量化分类者的可靠性。不幸的是,DL分类者被定性为黑箱系统,这些黑箱系统产生过于自信的预测,导致下游决策系统得出可能具有灾难性后果的错误结论。我们发现深雷达分类者对模糊而困难的样本保持高度的自信,例如,在远距离、域变换和信号腐败下测量的小物体,无论预测是否正确。本文章的重点是学习深雷达光谱分解器,在培训期间使用标签进行可靠的实时不确定性估计。拉贝平滑是一种精炼技术,或软化了分类数据集中通常提供的硬标签。我们发现,在文章中,我们利用特定雷达知识来确定软标签,鼓励分类者学习高质量校准的不确定性估计,从而部分解决了高清晰度的可靠性问题。我们的研究重点是,通过简单的雷达与复杂度分析,可以显示如何简单地了解高压率。