Bai Yunping, Xu Yifu, Chen Shifan, Zhu Xiaotian, Wang Shuai, Huang Sirui, Song Yuhang, Zheng Yixuan, Liu Zhihui, Tan Sim, Morandotti Roberto, Chu Sai T, Little Brent E, Moss David J, Xu Xingyuan, Xu Kun
State Key Laboratory of Information Photonics and Optical Communications, Beijing University of Posts and Telecommunications, Beijing, China.
Department of Physics, City University of Hong Kong, Hong Kong, China.
Nat Commun. 2025 Jan 2;16(1):292. doi: 10.1038/s41467-024-55321-8.
Complex-valued neural networks process both amplitude and phase information, in contrast to conventional artificial neural networks, achieving additive capabilities in recognizing phase-sensitive data inherent in wave-related phenomena. The ever-increasing data capacity and network scale place substantial demands on underlying computing hardware. In parallel with the successes and extensive efforts made in electronics, optical neuromorphic hardware is promising to achieve ultra-high computing performances due to its inherent analog architecture and wide bandwidth. Here, we report a complex-valued optical convolution accelerator operating at over 2 Tera operations per second (TOPS). With appropriately designed phasors we demonstrate its performance in the recognition of synthetic aperture radar (SAR) images captured by the Sentinel-1 satellite, which are inherently complex-valued and more intricate than what optical neural networks have previously processed. Experimental tests with 500 images yield an 83.8% accuracy, close to in-silico results. This approach facilitates feature extraction of phase-sensitive information, and represents a pivotal advance in artificial intelligence towards real-time, high-dimensional data analysis of complex and dynamic environments.
与传统人工神经网络不同,复值神经网络可处理幅度和相位信息,在识别与波相关现象中固有的相位敏感数据方面具备附加能力。不断增长的数据容量和网络规模对底层计算硬件提出了巨大需求。在电子学取得成功并付出大量努力的同时,光学神经形态硬件因其固有的模拟架构和宽带宽,有望实现超高计算性能。在此,我们报告一种每秒运行超过2万亿次运算(TOPS)的复值光学卷积加速器。通过适当设计的相量,我们展示了其在识别哨兵1号卫星捕获的合成孔径雷达(SAR)图像方面的性能,这些图像本质上是复值的,比光学神经网络之前处理的图像更为复杂。对500幅图像进行的实验测试得出了83.8%的准确率,接近计算机模拟结果。这种方法有助于提取相位敏感信息,代表了人工智能在复杂动态环境下进行实时、高维数据分析方面的关键进展。