Detecting 3D objects from point clouds is a practical yet challenging task that has attracted increasing attention recently. In this paper, we propose a Label-Guided auxiliary training method for 3D object detection (LG3D), which serves as an auxiliary network to enhance the feature learning of existing 3D object detectors. Specifically, we propose two novel modules: a Label-Annotation-Inducer that maps annotations and point clouds in bounding boxes to task-specific representations and a Label-Knowledge-Mapper that assists the original features to obtain detection-critical representations. The proposed auxiliary network is discarded in inference and thus has no extra computational cost at test time. We conduct extensive experiments on both indoor and outdoor datasets to verify the effectiveness of our approach. For example, our proposed LG3D improves VoteNet by 2.5% and 3.1% mAP on the SUN RGB-D and ScanNetV2 datasets, respectively.
翻译:从点云中检测 3D 对象是一项实用但富有挑战性的任务,最近引起越来越多的关注。 在本文中,我们提议了3D 对象探测的标签引导辅助培训方法(LG3D),作为辅助网络,以加强现有 3D 对象探测器的特征学习。具体地说,我们提议了两个新型模块:一个标签-说明-介绍,该模块绘制说明图,并点出将圆云与特定任务表达方式捆绑在一起的方框,另一个标签-知识-Mapper,该模块协助原始特征获得探测-关键表示方式。拟议的辅助网络被抛弃了推论,因此在测试时间没有额外的计算成本。我们在室内和室外数据集进行广泛的实验,以核实我们的方法的有效性。例如,我们提议的LG3D 将SUN RGB-D 和 ScanNetV2 数据集的投票网分别改进2.5%和3.1% mAP。