ON-THE-FLY LEARNING WITH MIXED-MODE SPIKING NEURAL NETWORK AND PASSIVE MEMRISTIVE ARRAY: APPLICATION TO NEUROMORPHIC CAMERAS

On-the-Fly Learning With Mixed-Mode Spiking Neural Network and Passive Memristive Array: Application to Neuromorphic Cameras

On-the-Fly Learning With Mixed-Mode Spiking Neural Network and Passive Memristive Array: Application to Neuromorphic Cameras

Blog Article

The massive deployment of the Internet of Things (IoT) combined with the need to reduce its impact on global energy consumption calls for the design of intelligent sensors.These sensors must be able to process information in situ to reduce the amount of data to be transferred, and to perform computing at low energy cost.Therefore, the design of intelligent sensors requires a compromise between performance and energy consumption.

Spiking neural networks (SNNs) are good candidates for achieving the goal AEG DIE6180HM 100cm Island Hood in Stainless Steel of an efficient intelligent sensor, as they use event-based computation.Interest for hardware implementation of SNNs has bloomed since the first experimental observation of memristors in 2008.In this paper, we study, by simulation means, the impact of the main technological parameters of Ferroelectric Tunnel Junctions (FTJs) synapses and of analog Leaky Integrate-and-Fire (LIF) neurons on the system learning capabilities.

This allows us to determine which parameters are critical for the design of such systems and to suggest mitigation solutions as well as guidelines on how to build a SNN-based smart vision sensor in the context of unsupervised or reward-modulated learning.In particular, we show that splitting up the passive crossbar array of memristors could help dealing with the detrimental effect Bra Accessories of the input voltage offset of the postsynaptic neurons.

Report this page