LGAISPMar 9, 2025

Hardware-Accelerated Event-Graph Neural Networks for Low-Latency Time-Series Classification on SoC FPGA

arXiv:2503.06629v13 citationsh-index: 13ARC
Originality Incremental advance
AI Analysis

This addresses the need for efficient, real-time AI processing on resource-constrained edge sensors, though it is incremental as it builds on existing event-based and hardware acceleration methods.

The paper tackles low-latency time-series classification on embedded edge devices by implementing an event-graph neural network on an SoC FPGA, achieving 92.7% accuracy on the SHD dataset with significantly fewer parameters and outperforming FPGA-based spiking neural networks by up to 19.3%.

As the quantities of data recorded by embedded edge sensors grow, so too does the need for intelligent local processing. Such data often comes in the form of time-series signals, based on which real-time predictions can be made locally using an AI model. However, a hardware-software approach capable of making low-latency predictions with low power consumption is required. In this paper, we present a hardware implementation of an event-graph neural network for time-series classification. We leverage an artificial cochlea model to convert the input time-series signals into a sparse event-data format that allows the event-graph to drastically reduce the number of calculations relative to other AI methods. We implemented the design on a SoC FPGA and applied it to the real-time processing of the Spiking Heidelberg Digits (SHD) dataset to benchmark our approach against competitive solutions. Our method achieves a floating-point accuracy of 92.7% on the SHD dataset for the base model, which is only 2.4% and 2% less than the state-of-the-art models with over 10% and 67% fewer model parameters, respectively. It also outperforms FPGA-based spiking neural network implementations by 19.3% and 4.5%, achieving 92.3% accuracy for the quantised model while using fewer computational resources and reducing latency.

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