Masominia Amir, Calvet Laurie E, Thorpe Simon, Barbay Sylvain
Université Paris-Saclay, CNRS, Centre de Nanosciences et de Nanotechnologies, Palaiseau, France.
LPICM, CNRS-Ecole Polytechnique, Palaiseau, France.
Front Comput Neurosci. 2023 Jul 3;17:1164472. doi: 10.3389/fncom.2023.1164472. eCollection 2023.
Classification and recognition tasks performed on photonic hardware-based neural networks often require at least one offline computational step, such as in the increasingly popular reservoir computing paradigm. Removing this offline step can significantly improve the response time and energy efficiency of such systems. We present numerical simulations of different algorithms that utilize ultrafast photonic spiking neurons as receptive fields to allow for image recognition without an offline computing step. In particular, we discuss the merits of event, spike-time and rank-order based algorithms adapted to this system. These techniques have the potential to significantly improve the efficiency and effectiveness of optical classification systems, minimizing the number of spiking nodes required for a given task and leveraging the parallelism offered by photonic hardware.
在基于光子硬件的神经网络上执行的分类和识别任务通常至少需要一个离线计算步骤,比如在日益流行的储层计算范式中。去除这个离线步骤可以显著提高此类系统的响应时间和能源效率。我们展示了不同算法的数值模拟,这些算法利用超快光子脉冲神经元作为感受野,从而在无需离线计算步骤的情况下实现图像识别。特别地,我们讨论了适用于该系统的基于事件、脉冲时间和秩次排序算法的优点。这些技术有潜力显著提高光学分类系统的效率和有效性,将给定任务所需的脉冲节点数量减至最少,并利用光子硬件提供的并行性。