| Jahr | 2026 |
| Autor(en) | Yannik Stradmann, Johannes Schemmel, Mihai A. Petrovici, Laura Kriener |
| Titel | Real-time processing of analog signals on accelerated neuromorphic hardware |
| KIP-Nummer | HD-KIP 26-03 |
| KIP-Gruppe(n) | F9 |
| Dokumentart | Paper |
| Quelle | arXiv:2602.04582 [cs.NE] |
| doi | 10.48550/arXiv.2602.04582 |
| Abstract (en) | Sensory processing with neuromorphic systems is typically done by using either event-based sensors or translating input signals to spikes before presenting them to the neuromorphic processor. Here, we offer an alternative approach: direct analog signal injection eliminates superfluous and power-intensive analog-to-digital and digital-to-analog conversions, making it particularly suitable for efficient near-sensor processing. We demonstrate this by using the accelerated BrainScaleS-2 mixed-signal neuromorphic research platform and interfacing it directly to microphones and a servo-motor-driven actuator. Utilizing BrainScaleS-2's 1000-fold acceleration factor, we employ a spiking neural network to transform interaural time differences into a spatial code and thereby predict the location of sound sources. Our primary contributions are the first demonstrations of direct, continuous-valued sensor data injection into the analog compute units of the BrainScaleS-2 ASIC, and actuator control using its embedded microprocessors. This enables a fully on-chip processing pipeline—from sensory input handling, via spiking neural network processing to physical action. We showcase this by programming the system to localize and align a servo motor with the spatial direction of transient noise peaks in real-time. |
| bibtex | @article{stradmann2026realtime,
author = {Stradmann, Yannik and Schemmel, Johannes and Petrovici, Mihai A. and Kriener, Laura},
title = {Real-time processing of analog signals on accelerated neuromorphic hardware},
journal = {arXiv:2602.04582 [cs.NE]},
year = {2026}
} |
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