EvGNN: An Event-driven Graph Neural Network Accelerator for Edge Vision
Yufeng Yang, Adrian Kneip, Charlotte Frenkel

TL;DR
EvGNN is a novel hardware accelerator designed for event-driven graph neural networks, enabling real-time, low-latency, and energy-efficient edge vision systems using event-based cameras.
Contribution
It introduces the first event-driven GNN accelerator with innovative graph management and processing schemes tailored for sparse event-based vision data.
Findings
Achieves 87.8% classification accuracy on N-CARS dataset.
Provides an average latency of 16 microseconds per event.
Demonstrates real-time processing capabilities at the edge.
Abstract
Edge vision systems combining sensing and embedded processing promise low-latency, decentralized, and energy-efficient solutions that forgo reliance on the cloud. As opposed to conventional frame-based vision sensors, event-based cameras deliver a microsecond-scale temporal resolution with sparse information encoding, thereby outlining new opportunities for edge vision systems. However, mainstream algorithms for frame-based vision, which mostly rely on convolutional neural networks (CNNs), can hardly exploit the advantages of event-based vision as they are typically optimized for dense matrix-vector multiplications. While event-driven graph neural networks (GNNs) have recently emerged as a promising solution for sparse event-based vision, their irregular structure is a challenge that currently hinders the design of efficient hardware accelerators. In this paper, we propose EvGNN, the…
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Taxonomy
TopicsAdvanced Optical Sensing Technologies · Infrared Target Detection Methodologies · Neural Networks and Applications
