Decision-making and control with metasurface-based diffractive neural networks

12/21/2022
by   Jumin Qiu, et al.
0

The ultimate goal of artificial intelligence is to mimic the human brain to perform decision-making and control directly from high-dimensional sensory input. All-optical diffractive neural networks provide a promising solution for implementing artificial intelligence with high-speed and low-power consumption. To date, most of the reported diffractive neural networks focus on single or multiple tasks that do not involve interaction with the environment, such as object recognition and image classification. In contrast, the networks that can perform decision-making and control, to our knowledge, have not been developed yet. Here, we propose using deep reinforcement learning to implement diffractive neural networks that imitate human-level decision-making and control capability. Such networks allow for finding optimal control policies through interaction with the environment and can be readily realized with the dielectric metasurfaces. The superior performances of these networks are verified by engaging three types of classic games, Tic-Tac-Toe, Super Mario Bros., and Car Racing, and achieving the same or even higher levels comparable to human players. Our work represents a solid step of advancement in diffractive neural networks, which promises a fundamental shift from the target-driven control of a pre-designed state for simple recognition or classification tasks to the high-level sensory capability of artificial intelligence. It may find exciting applications in autonomous driving, intelligent robots, and intelligent manufacturing.

READ FULL TEXT

page 3

page 5

page 8

page 10

research
06/12/2023

Intelligent Multi-channel Meta-imagers for Accelerating Machine Vision

Rapid developments in machine vision have led to advances in a variety o...
research
05/10/2019

Design of Artificial Intelligence Agents for Games using Deep Reinforcement Learning

In order perform a large variety of tasks and to achieve human-level per...
research
04/14/2019

Dot-to-Dot: Achieving Structured Robotic Manipulation through Hierarchical Reinforcement Learning

Robotic systems are ever more capable of automation and fulfilment of co...
research
07/12/2016

Automatic Bridge Bidding Using Deep Reinforcement Learning

Bridge is among the zero-sum games for which artificial intelligence has...
research
02/26/2022

The Quest for a Common Model of the Intelligent Decision Maker

The premise of Multi-disciplinary Conference on Reinforcement Learning a...
research
11/23/2021

Inducing Functions through Reinforcement Learning without Task Specification

We report a bio-inspired framework for training a neural network through...

Please sign up or login with your details

Forgot password? Click here to reset