Cheng Junwei, Xie Yanzhao, Liu Yu, Song Junjie, Liu Xinyu, He Zhenming, Zhang Wenkai, Han Xinjie, Zhou Hailong, Zhou Ke, Zhou Heng, Dong Jianji, Zhang Xinliang
Wuhan National Laboratory for Optoelectronics, Huazhong University of Science and Technology, Wuhan 430074, China.
Optics Valley Laboratory, Wuhan 430074, China.
Nanophotonics. 2023 Oct 2;12(20):3883-3894. doi: 10.1515/nanoph-2023-0298. eCollection 2023 Oct.
State-of-the-art deep learning models can converse and interact with humans by understanding their emotions, but the exponential increase in model parameters has triggered an unprecedented demand for fast and low-power computing. Here, we propose a microcomb-enabled integrated optical neural network (MIONN) to perform the intelligent task of human emotion recognition at the speed of light and with low power consumption. Large-scale tensor data can be independently encoded in dozens of frequency channels generated by the on-chip microcomb and computed in parallel when flowing through the microring weight bank. To validate the proposed MIONN, we fabricated proof-of-concept chips and a prototype photonic-electronic artificial intelligence (AI) computing engine with a potential throughput up to 51.2 TOPS (tera-operations per second). We developed automatic feedback control procedures to ensure the stability and 8 bits weighting precision of the MIONN. The MIONN has successfully recognized six basic human emotions, and achieved 78.5 % accuracy on the blind test set. The proposed MIONN provides a high-speed and energy-efficient neuromorphic computing hardware for deep learning models with emotional interaction capabilities.
最先进的深度学习模型可以通过理解人类的情绪与人类进行对话和互动,但模型参数的指数级增长引发了对快速和低功耗计算的前所未有的需求。在此,我们提出了一种基于微梳的集成光学神经网络(MIONN),以光速且低功耗地执行人类情绪识别的智能任务。大规模张量数据可以独立编码在由片上微梳产生的数十个频率通道中,并在流经微环权重库时进行并行计算。为了验证所提出的MIONN,我们制造了概念验证芯片和一个原型光子 - 电子人工智能(AI)计算引擎,其潜在吞吐量高达51.2 TOPS(每秒万亿次运算)。我们开发了自动反馈控制程序,以确保MIONN的稳定性和8位加权精度。MIONN成功识别了六种基本人类情绪,并在盲测集上达到了78.5%的准确率。所提出的MIONN为具有情感交互能力的深度学习模型提供了一种高速且节能的神经形态计算硬件。