Treffer: Spiking Neural Networks in Imaging: A Review and Case Study.

Title:
Spiking Neural Networks in Imaging: A Review and Case Study.
Authors:
Voudaskas, Michael1,2 (AUTHOR) michalis.voudaskas@ed.ac.uk, MacLean, Jack Iain1,2 (AUTHOR), Dutton, Neale A. W.1,2 (AUTHOR), Stewart, Brian D.2 (AUTHOR), Gyongy, Istvan1 (AUTHOR)
Source:
Sensors (14248220). Nov2025, Vol. 25 Issue 21, p6747. 31p.
Database:
Academic Search Index

Weitere Informationen

This review examines the state of spiking neural networks (SNNs) for imaging, combining a structured literature survey, a comparative meta-analysis of reported datasets, training strategies, hardware platforms, and applications and a case study on LMU-based depth estimation in direct Time-of-Flight (dToF) imaging. While SNNs demonstrate promise for energy-efficient, event-driven computation, current progress is constrained by reliance on small or custom datasets, ANN-SNN conversion inefficiencies, simulation-based hardware evaluation, and a narrow focus on classification tasks. The analysis highlights scaling trade-offs between accuracy and efficiency, persistent latency bottlenecks, and limited sensor–hardware integration. These findings were synthesised into key challenges and future directions, emphasising benchmarks, hardware-aware training, ecosystem development, and broader application domains. [ABSTRACT FROM AUTHOR]