3D object detection is an essential part of automated driving, and deep neural networks (DNNs) have achieved state-of-the-art performance for this task. However, deep models are notorious for assigning high confidence scores to out-of-distribution (OOD) inputs, that is, inputs that are not drawn from the training distribution. Detecting OOD inputs is challenging and essential for the safe deployment of models. OOD detection has been studied extensively for the classification task, but it has not received enough attention for the object detection task, specifically LiDAR-based 3D object detection. In this paper, we focus on the detection of OOD inputs for LiDAR-based 3D object detection. We formulate what OOD inputs mean for object detection and propose to adapt several OOD detection methods for object detection. We accomplish this by our proposed feature extraction method. To evaluate OOD detection methods, we develop a simple but effective technique of generating OOD objects for a given object detection model. Our evaluation based on the KITTI dataset shows that different OOD detection methods have biases toward detecting specific OOD objects. It emphasizes the importance of combined OOD detection methods and more research in this direction.
翻译:3D物体探测是自动驾驶的一个基本部分,深神经网络(DNNs)已经为这项任务取得了最先进的性能。然而,深型模型臭名昭著,因为将高度信任分数分配给分配之外的输入(OOD),即不是从培训分布中提取的投入。检测OOOD投入具有挑战性,对于安全部署模型至关重要。为进行分类任务,对OOOD探测进行了广泛研究,但对于物体探测任务,特别是基于LIDAR的3D物体探测,它没有得到足够的重视。在本文件中,我们侧重于检测基于LIDAR的3D物体探测 OOD投入。我们制定OOD投入对物体探测意味着什么,并提议调整一些OOD探测方法。我们通过拟议的特征提取方法实现这一目标。为了评估OOD探测方法,我们开发了一种简单而有效的方法,为特定物体探测模型生成OOD物体。我们根据KITTI数据集进行的评估表明,不同的OD探测方法对探测特定OD物体有偏差。我们强调将OD探测方法结合起来的重要性,并进行更多的研究。