Abstract
The existing implementations of reconfigurable diffractive neural networks rely on both a liquid-crystal spatial light modulator and a digital micromirror device, which results in complexity in the alignment of the optical system and a constrained computational speed. Here, we propose a superpixel diffractive neural network that leverages solely a digital micromirror device to control the neuron bias and connection. This approach considerably simplifies the optical system and achieves a computational speed of 326 Hz per neural layer. We validate our method through experiments in digit classification, achieving an accuracy of 82.6%, and action recognition, attaining a perfect accuracy of 100%. Our findings demonstrate the effectiveness of the superpixel diffractive neural network in simplifying the optical system and enhancing computational speed, opening up new possibilities for real-time optical information processing applications.
© 2023 Optica Publishing Group
Full Article | PDF ArticleMore Like This
Minhan Lou, Yingjie Li, Cunxi Yu, Berardi Sensale-Rodriguez, and Weilu Gao
Opt. Lett. 48(2) 219-222 (2023)
Guohua Wu, Yong Sun, Longfei Yin, Zhixiong Song, and Wenting Yu
Opt. Lett. 48(10) 2764-2767 (2023)
Jianmin He, Zhenghao Guo, Yongying Zhang, Yiyang Lu, Feng Wen, Haixia Da, Guofu Zhou, Dong Yuan, and Huapeng Ye
Opt. Lett. 48(6) 1474-1477 (2023)