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BIDL: a brain-inspired deep learning framework for spatiotemporal processing.

Zhenzhi Wu1, Yangshu Shen1,2, Jing Zhang1

  • 1Lynxi Technologies, Co. Ltd., Beijing, China.

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|August 11, 2023
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Summary
This summary is machine-generated.

This study introduces the Brain-Inspired Deep Learning (BIDL) framework for generalized spatiotemporal processing. BIDL enables efficient, brain-inspired deep spiking neural network (DSNN) model development for diverse data types.

Keywords:
brain-inspired computingglobal-local co-learningleaky integrate and firereward-modulated STDPspatiotemporal processing frameworkspiking neural networksynaptic plasticityvideo recognition

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Area of Science:

  • Neuroscience
  • Machine Learning
  • Computer Vision

Background:

  • Deep spiking neural networks (DSNNs) emulate biological brains for spatiotemporal perception (STP), particularly with dynamic vision sensor (DVS) data.
  • Existing frameworks lack generalization for diverse spatiotemporal data like videos and 3D imaging.

Purpose of the Study:

  • Introduce a unified training platform, Brain-Inspired Deep Learning (BIDL), for generalized spatiotemporal processing (STP).
  • Investigate lightweight STP using brain-inspired neural dynamics.
  • Provide a research framework for neuroscience and machine learning exploration.

Main Methods:

  • Developed the BIDL framework for constructing deep neural networks.
  • Integrated neural dynamics for temporal processing and artificial neural network layers for spatial accuracy.
  • Implemented optimizations for neuromorphic chips and GPUs (iteration representation, state-aware computational graph, built-in neural functions).

Main Results:

  • Demonstrated BIDL's efficiency across diverse data: video, DVS, 3D medical imaging, and natural language processing.
  • Showcased BIDL's capability for generalized spatiotemporal processing.
  • Validated BIDL as a user-friendly and efficient DSNN builder.

Conclusions:

  • BIDL offers a unified and efficient solution for generalized spatiotemporal processing using brain-inspired deep learning.
  • The framework facilitates exploration of neural models and co-learning, advancing bio-inspired research.
  • BIDL supports lightweight STP applications, adaptable for neuromorphic hardware and GPUs.