Representing Camera Response Function by a Single Latent Variable and Fully Connected Neural Network

09/08/2022
by   Yunfeng Zhao, et al.
0

Modelling the mapping from scene irradiance to image intensity is essential for many computer vision tasks. Such mapping is known as the camera response. Most digital cameras use a nonlinear function to map irradiance, as measured by the sensor to an image intensity used to record the photograph. Modelling of the response is necessary for the nonlinear calibration. In this paper, a new high-performance camera response model that uses a single latent variable and fully connected neural network is proposed. The model is produced using unsupervised learning with an autoencoder on real-world (example) camera responses. Neural architecture searching is then used to find the optimal neural network architecture. A latent distribution learning approach was introduced to constrain the latent distribution. The proposed model achieved state-of-the-art CRF representation accuracy in a number of benchmark tests, but is almost twice as fast as the best current models when performing the maximum likelihood estimation during camera response calibration due to the simple yet efficient model representation.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/16/2020

Noise-Aware Merging of High Dynamic Range Image Stacks without Camera Calibration

A near-optimal reconstruction of the radiance of a High Dynamic Range sc...
research
12/30/2021

Colour alignment for relative colour constancy via non-standard references

Relative colour constancy is an essential requirement for many scientifi...
research
07/07/2020

Benefiting Deep Latent Variable Models via Learning the Prior and Removing Latent Regularization

There exist many forms of deep latent variable models, such as the varia...
research
05/19/2021

Correlated Input-Dependent Label Noise in Large-Scale Image Classification

Large scale image classification datasets often contain noisy labels. We...
research
06/14/2016

Recursive nonlinear-system identification using latent variables

In this paper we develop a method for learning nonlinear systems with mu...
research
06/20/2019

Clustering and Classification Networks

In this paper, we will describe a network architecture that demonstrates...

Please sign up or login with your details

Forgot password? Click here to reset