In this paper, we develop a novel benchmark suite including both a 2D synthetic image dataset and a 3D synthetic point cloud dataset. Our work is a sub-task in the framework of a remanufacturing project, in which small electric motors are used as fundamental objects. Apart from the given detection, classification, and segmentation annotations, the key objects also have multiple learnable attributes with ground truth provided. This benchmark can be used for computer vision tasks including 2D/3D detection, classification, segmentation, and multi-attribute learning. It is worth mentioning that most attributes of the motors are quantified as continuously variable rather than binary, which makes our benchmark well-suited for the less explored regression tasks. In addition, appropriate evaluation metrics are adopted or developed for each task and promising baseline results are provided. We hope this benchmark can stimulate more research efforts on the sub-domain of object attribute learning and multi-task learning in the future.
翻译:在本文中,我们开发了一个新的基准套件,包括 2D 合成图像数据集和 3D 合成点云数据集。我们的工作是在一个再制造项目框架内的一个子任务,该项目将小型电动机用作基本物体。除了给定的检测、分类和分解说明外,关键物体还有多种可学习的属性,并提供了地面真相。这个基准可用于计算机的视觉任务,包括2D/3D 探测、分类、分解和多属性学习。值得一提的是,大多数发动机的属性都量化为持续可变而不是二进制,这使得我们的基准非常适合探索较少的回归任务。此外,为每一项任务采用或制定适当的评价指标,并提供有希望的基线结果。我们希望这一基准能够激励今后对对象属性学习和多任务学习的子领域进行更多的研究工作。