Bio-Inspired Simple Neural Network for Low-Light Image Restoration: A Minimalist Approach

05/03/2023
by   Junjie Ye, et al.
0

In this study, we explore the potential of using a straightforward neural network inspired by the retina model to efficiently restore low-light images. The retina model imitates the neurophysiological principles and dynamics of various optical neurons. Our proposed neural network model reduces the computational overhead compared to traditional signal-processing models while achieving results similar to complex deep learning models from a subjective perceptual perspective. By directly simulating retinal neuron functionalities with neural networks, we not only avoid manual parameter optimization but also lay the groundwork for constructing artificial versions of specific neurobiological organizations.

READ FULL TEXT
research
10/04/2022

Low-Light Image Restoration Based on Retina Model using Neural Networks

We report the possibility of using a simple neural network for effortles...
research
04/15/2021

A Novel Neuron Model of Visual Processor

Simulating and imitating the neuronal network of humans or mammals is a ...
research
12/12/2016

Autoencoder-based holographic image restoration

We propose a holographic image restoration method using an autoencoder, ...
research
04/24/2018

Opening the black box of neural nets: case studies in stop/top discrimination

We introduce techniques for exploring the functionality of a neural netw...
research
05/25/2017

Classification of Quantitative Light-Induced Fluorescence Images Using Convolutional Neural Network

Images are an important data source for diagnosis and treatment of oral ...
research
04/06/2023

ElegansNet: a brief scientific report and initial experiments

This research report introduces ElegansNet, a neural network that mimics...
research
10/31/2020

A review of neural network algorithms and their applications in supercritical extraction

Neural network realizes multi-parameter optimization and control by simu...

Please sign up or login with your details

Forgot password? Click here to reset