The ability to perceive object slip via tactile feedback enables humans to accomplish complex manipulation tasks including maintaining a stable grasp. Despite the utility of tactile information for many applications, tactile sensors have yet to be widely deployed in industrial robotics settings; part of the challenge lies in identifying slip and other events from the tactile data stream. In this paper, we present a learning-based method to detect slip using barometric tactile sensors. These sensors have many desirable properties including high durability and reliability, and are built from inexpensive, off-the-shelf components. We train a temporal convolution neural network to detect slip, achieving high detection accuracies while displaying robustness to the speed and direction of the slip motion. Further, we test our detector on two manipulation tasks involving a variety of common objects and demonstrate successful generalization to real-world scenarios not seen during training. We argue that barometric tactile sensing technology, combined with data-driven learning, is suitable for many manipulation tasks such as slip compensation.
翻译:通过触觉反馈感知天体滑落的能力使人类能够完成复杂的操作任务,包括保持稳定的掌握。尽管触觉信息对许多应用都非常有用,但触觉传感器尚未在工业机器人环境中广泛部署;部分挑战在于从触觉数据流中识别滑落和其他事件。在本文中,我们展示了一种学习方法,用气压计触动传感器探测滑落。这些传感器有许多可取的特性,包括高耐久性和可靠性,并且是由廉价的、现成的部件建造的。我们训练了一个时间性共振神经网络,以探测滑动,达到高探测精度,同时显示滑动的速度和方向。此外,我们测试我们的探测器,在涉及各种共同物体的两种操纵任务上,并展示出在训练过程中看不到的真实世界情景的成功概观。我们争辩说,光学触摸技术,加上数据驱动的学习,适合于许多操纵任务,例如滑动补偿。