Spectral Convolutional Neural Network Chip for In-sensor Edge Computing of Incoherent Natural Light
Kaiyu Cui, Shijie Rao, Sheng Xu, Yidong Huang, Xusheng Cai, Zhilei, Huang, Yu Wang, Xue Feng, Fang Liu, Wei Zhang, Yali Li, and Shengjin Wang

TL;DR
This paper introduces a novel spectral convolutional neural network chip that uses incoherent natural light for highly energy-efficient in-sensor edge computing, enabling complex real-world tasks with high accuracy.
Contribution
It presents the first integrated optical computing system utilizing natural light, combining an optical convolutional layer with a reconfigurable electrical backend for edge applications.
Findings
Achieved over 96% accuracy in pathological diagnosis
Achieved nearly 100% accuracy in face anti-spoofing
Demonstrated high energy efficiency and real-time processing capabilities
Abstract
Convolutional neural networks (CNNs) are representative models of artificial neural networks (ANNs). However, the considerable power consumption and limited computing speed of electrical computing platforms restrict further CNN development on edge devices. Optical neural networks are considered next-generation physical implementations of ANNs, but their capabilities are limited by on-chip integration scale and requirement for coherent light sources. This study proposes a spectral convolutional neural network (SCNN) of incoherent natural light by an optical convolutional layer (OCL) and a reconfigurable electrical backend. The OCL is implemented by integrating very large-scale, pixel-aligned spectral filters on a CMOS image sensor on a 12-inch wafer, facilitating highly parallel spectral vector-inner products of incident light. It accepts broadband incoherent natural light containing two…
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Taxonomy
TopicsAdvanced Memory and Neural Computing · Neural Networks and Reservoir Computing · Advanced Optical Imaging Technologies
