Optics-free Image Classification with Deep Metric Learning
Date
2023
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Tartu Ülikool
Abstract
The lens is defined as a device to control how light reaches the imaging surface
and is a fundamental component of imaging. Imaging applications are ubiquitous,
ranging from autonomous driving to biomedical applications. With advancements in
imaging technology, new applications in fields such as biomedicine and defense are
driving a significant push toward the miniaturization of cameras. Unfortunately, this
miniaturization has a fundamental difficulty: the total amount of light collected at the
sensor image decreases with the lens aperture. As a result, ultra-miniature images
collected simply by scaling down the optics and sensors are noisy. Thus, an innovative
concept is introduced in which the lens is removed; however, the resulting images
obtained without the lens are degraded. To address this issue, an alternative encoding
scheme and computational algorithms are used to retrieve back the image, which we
refer to as optics-free imaging.
This thesis proposes a novel approach to using Deep Metric Learning for opticsfree
image classification. Our Deep Convolutional Neural Network uses the image
similarity metric for its learning algorithms. In this thesis, first, we trained our model
with the dataset composed of degraded Cifar10 images taken in the lab and the original
Cifar10 dataset for image classification. In the next task, we train our model on opticsfree
(reconstructive) Cifar10 images obtained from degraded Cifar10 images using
CycleGAN, along with original Cifar10 images for image classification. Finally, we
employed Bayesian Prior to update the learning and computed the KL divergence.
Description
Keywords
Optics-free image classification, Deep Metric Learning, Triplet loss, Quadruplet loss, Bayesian inference