| Literature DB >> 29882255 |
Changjin Wan1, Geng Chen1, Yangming Fu2, Ming Wang1, Naoji Matsuhisa1, Shaowu Pan1, Liang Pan1, Hui Yang1, Qing Wan3, Liqiang Zhu2, Xiaodong Chen1.
Abstract
Sensory neurons within skin form an interface between the external physical reality and the inner tactile perception. This interface enables sensory information to be organized identified, and interpreted through perceptual learning-the process whereby the sensing abilities improve through experience. Here, an artificial sensory neuron that can integrate and differentiate the spatiotemporal features of touched patterns for recognition is shown. The system comprises sensing, transmitting, and processing components that are parallel to those found in a sensory neuron. A resistive pressure sensor converts pressure stimuli into electric signals, which are transmitted to a synaptic transistor through interfacial ionic/electronic coupling via a soft ionic conductor. Furthermore, the recognition error rate can be dramatically decreased from 44% to 0.4% by integrating with the machine learning method. This work represents a step toward the design and use of neuromorphic electronic skin with artificial intelligence for robotics and prosthetics.Keywords: artificial intelligence; artificial neurons; electronic skin; neuromorphic engineering; perceptual learning
Mesh:
Year: 2018 PMID: 29882255 DOI: 10.1002/adma.201801291
Source DB: PubMed Journal: Adv Mater ISSN: 0935-9648 Impact factor: 30.849