In this work, we present several heuristic-based and data-driven active vision strategies for viewpoint optimization of an arm-mounted depth camera for the purpose of aiding robotic grasping. These strategies aim to efficiently collect data to boost the performance of an underlying grasp synthesis algorithm. We created an open-source benchmarking platform in simulation (https://github.com/galenbr/2021ActiveVision), and provide an extensive study for assessing the performance of the proposed methods as well as comparing them against various baseline strategies. We also provide an experimental study with a real-world setup by utilizing an existing grasping planning benchmark in the literature. With these analyses, we were able to quantitatively demonstrate the versatility of heuristic methods that prioritize certain types of exploration, and qualitatively show their robustness to both novel objects and the transition from simulation to the real world. We identified scenarios in which our methods did not perform well and scenarios that are objectively difficult, and present a discussion on which avenues for future research show promise.
翻译:在这项工作中,我们提出了若干基于逻辑和数据驱动的积极愿景战略,以便从观点上优化一台用于协助机器人捕捉的架式深层相机。这些战略旨在高效收集数据,以提高基本掌握合成算法的性能。我们在模拟中创建了一个开放源基准平台(https://github.com/galenbr/2021AviewVision),为评估拟议方法的性能以及对照各种基线战略比较这些方法提供了广泛的研究。我们还利用文献中现有的掌握的规划基准,提供了一份具有现实世界设置的实验性研究。通过这些分析,我们得以量化地展示了将某些类型的勘探列为优先事项的超值方法的多功能,从质量上显示了其对新物体的稳健性和从模拟向现实世界的转变。我们确定了我们的方法效果不佳的情景以及客观上困难的情景,并提出了未来研究途径的希望。