Eon-1: A Brain-Inspired Processor for Near-Sensor Extreme Edge Online Feature Extraction

  • Alexandra Dobrita
  • , Amirreza Yousefzadeh
  • , Simon Thorpe
  • , Kanishkan Vadivel
  • , Paul Detterer
  • , Guangzhi Tang
  • , Gert-Jan van Schaik
  • , Mario Konijnenburg
  • , Anteneh Gebregiorgis
  • , Said Hamdioui
  • , Manolis Sifalakis

Research output: Working paperPreprintAcademic

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Abstract

For Edge AI applications, deploying online learning and adaptation on resource-constrained embedded devices can deal with fast sensor-generated streams of data in changing environments. However, since maintaining low-latency and power-efficient inference is paramount at the Edge, online learning and adaptation on the device should impose minimal additional overhead for inference. With this goal in mind, we explore energy-efficient learning and adaptation on-device for streaming-data Edge AI applications using Spiking Neural Networks (SNNs), which follow the principles of brain-inspired computing, such as high-parallelism, neuron co-located memory and compute, and event-driven processing. We propose EON-1, a brain-inspired processor for near-sensor extreme edge online feature extraction, that integrates a fast online learning and adaptation algorithm. We report results of only 1% energy overhead for learning, by far the lowest overhead when compared to other SoTA solutions, while attaining comparable inference accuracy. Furthermore, we demonstrate that EON-1 is up for the challenge of low-latency processing of HD and UHD streaming video in real-time, with learning enabled.
Original languageEnglish
PublisherArXiv.org
DOIs
Publication statusPublished - 25 Jun 2024

Keywords

  • cs.NE
  • cs.AI
  • cs.ET
  • cs.LG

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