Back to Search Start Over

Metasurface-generated large and arbitrary analog convolution kernels for accelerated machine vision

Authors :
Liang, Ruiqi
Wang, Shuai
Dong, Yiying
Li, Liu
Kuang, Ying
Zhang, Bohan
Yang, Yuanmu
Publication Year :
2024

Abstract

In the rapidly evolving field of artificial intelligence, convolutional neural networks are essential for tackling complex challenges such as machine vision and medical diagnosis. Recently, to address the challenges in processing speed and power consumption of conventional digital convolution operations, many optical components have been suggested to replace the digital convolution layer in the neural network, accelerating various machine vision tasks. Nonetheless, the analog nature of the optical convolution kernel has not been fully explored. Here, we develop a spatial frequency domain training method to create arbitrarily shaped analog convolution kernels using an optical metasurface as the convolution layer, with its receptive field largely surpassing digital convolution kernels. By employing spatial multiplexing, the multiple parallel convolution kernels with both positive and negative weights are generated under the incoherent illumination condition. We experimentally demonstrate a 98.59% classification accuracy on the MNIST dataset, with simulations showing 92.63% and 68.67% accuracy on the Fashion-MNIST and CIFAR-10 datasets with additional digital layers. This work underscores the unique advantage of analog optical convolution, offering a promising avenue to accelerate machine vision tasks, especially in edge devices.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2409.18614
Document Type :
Working Paper