Abstract
Neuromorphic processors are well-suited for efficiently handling sparse events from event-based cameras. However, they face significant challenges in the growth of computing demand and hardware costs as the input resolution increases. This paper proposes the Trainable Region-of-Interest Prediction (TRIP)', the first hardware-efficient hard attention framework for event-based vision processing on a neuromorphic processor. Our TRIP framework actively produces low-resolution Region-of-Interest (ROIs) for efficient and accurate classification. The framework exploits sparse events' inherent low information density to reduce the overhead of ROI prediction. We introduced extensive hardware-aware optimizations for TRIP and implemented the hardware-optimized algorithm on the SENECA neuromorphic processor. We utilized multiple event-based classification datasets for evaluation. Our approach achieves state-of-the-art accuracies in all datasets and produces reasonable ROIs with varying locations and sizes. On the DvsGesture dataset, our solution requires 46× less computation than the state-of-the-art while achieving higher accuracy. Furthermore, TRIP enables more than 2× latency and energy improvements on the SENECA neuromorphic processor compared to the conventional solution.
Original language | English |
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Title of host publication | Proceedings - 2024 International Conference on Neuromorphic Systems, ICONS 2024 |
Publisher | IEEE |
Pages | 94-101 |
Number of pages | 8 |
ISBN (Electronic) | 9798350368659 |
DOIs | |
Publication status | Published - 2 Aug 2024 |
Event | 2024 International Conference on Neuromorphic Systems, ICONS 2024 - Arlington, United States Duration: 30 Jul 2024 → 2 Aug 2024 https://iconsneuromorphic.cc/ |
Conference
Conference | 2024 International Conference on Neuromorphic Systems, ICONS 2024 |
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Abbreviated title | ICONS 2024 |
Country/Territory | United States |
City | Arlington |
Period | 30/07/24 → 2/08/24 |
Internet address |
Keywords
- digital neuromorphic processor
- event-based neural network
- event-based vision
- hard attention