We introduce a spherical fingertip sensor for dynamic manipulation. It is based on barometric pressure and time-of-flight proximity sensors and is low-latency, compact, and physically robust. The sensor uses a trained neural network to estimate the contact location and three-axis contact forces based on data from the pressure sensors, which are embedded within the sensor's sphere of polyurethane rubber. The time-of-flight sensors face in three different outward directions, and an integrated microcontroller samples each of the individual sensors at up to 200 Hz. To quantify the effect of system latency on dynamic manipulation performance, we develop and analyze a metric called the collision impulse ratio and characterize the end-to-end latency of our new sensor. We also present experimental demonstrations with the sensor, including measuring contact transitions, performing coarse mapping, maintaining a contact force with a moving object, and reacting to avoid collisions.
翻译:我们引入了一个用于动态操纵的球形指尖传感器,该传感器基于气压压力和飞行时间近距离传感器,并且具有低延迟性、紧凑性和体力强。传感器使用一个训练有素的神经网络,根据嵌入聚氨酯橡胶传感器范围内的压力传感器的数据估计接触地点和三轴接触力量。飞行时间传感器面对三个不同的向外方向,每个传感器都有一个综合微控制器样本,在200赫兹以内。为了量化系统悬浮对动态操纵性能的影响,我们开发并分析一个称为碰撞脉冲比率的测量指标,并描述我们新传感器的端至端悬浮特征。我们还展示了传感器的实验性演示,包括测量接触过渡,进行粗微的绘图,保持与移动物体的接触力,并作出反应以避免碰撞。</s>