论文标题
Neurotac:应用于纹理识别的神经形态光学触觉传感器
NeuroTac: A Neuromorphic Optical Tactile Sensor applied to Texture Recognition
论文作者
论文摘要
开发人造触觉感应能力,使人类触摸与人触摸是一个长期目标。逐渐开发出更精致的仿生触觉传感器,并应用于掌握和操纵任务,以帮助实现这一目标。在这里,我们提出了一种新型神经形态光学触觉传感器。 Neurotac通过Tactip传感器结合了仿生硬件设计,该设计模仿了人类无毛皮肤的分层乳头结构,以及基于事件的相机(Davis240,Inivation)和算法,这些相机和算法以尖峰火车的形式传递接触信息。在纹理分类任务上评估了传感器的性能,并进行了四种尖峰编码方法:密集,空间,时间和时空。我们发现基于计时的编码方法在人工和自然纹理上以最高精度执行。基于尖峰的神经望酸的输出可以使机器人技术中的仿生触觉感知算法以及假体中的非侵入性和侵入性触觉反馈方法的发展。
Developing artificial tactile sensing capabilities that rival human touch is a long-term goal in robotics and prosthetics. Gradually more elaborate biomimetic tactile sensors are being developed and applied to grasping and manipulation tasks to help achieve this goal. Here we present the neuroTac, a novel neuromorphic optical tactile sensor. The neuroTac combines the biomimetic hardware design from the TacTip sensor which mimicks the layered papillae structure of human glabrous skin, with an event-based camera (DAVIS240, iniVation) and algorithms which transduce contact information in the form of spike trains. The performance of the sensor is evaluated on a texture classification task, with four spike coding methods being implemented and compared: Intensive, Spatial, Temporal and Spatiotemporal. We found timing-based coding methods performed with the highest accuracy over both artificial and natural textures. The spike-based output of the neuroTac could enable the development of biomimetic tactile perception algorithms in robotics as well as non-invasive and invasive haptic feedback methods in prosthetics.