Micro-ring resonator assisted spiking neural network for efficient object detection.
Journal:
Optics letters
Published Date:
Jun 15, 2025
Abstract
Optical computing and spiking neural networks (SNNs) have garnered significant attention as next-generation technologies due to their high parallelism and low-energy consumption. However, the current implementations for realizing spiking neurons of photonic neuromorphic computing mainly rely on active devices or nonlinear effects, which pose challenges for large-scale integration and energy conservation. Moreover, most existing optical SNN applications have been limited to simple image classification tasks. To address these limitations, we propose an optical-assisted SNN model based on the passive add-drop micro-ring resonator (ADMRR), which simulates the membrane potential accumulation in spiking neurons through optical temporal integration. System-level object detection is conducted numerically by the spiking version of the modified YOLO algorithm with ADMRR-based neurons. The results show that the proposed photonic SNN achieves performance exceeding 98% of that attained by computer-based SNN on the PASCAL VOC dataset, which contains 11,530 images across 20 object categories. Our work offers advantages including simplicity, enhanced parallelism, ease of large-scale integration, and effective emulation of neuronal leakage and integration dynamics, paving the way for the widespread use of photonic SNNs in more complex image processing tasks.
Authors
Keywords
No keywords available for this article.