Synergistic application of advanced machine learning and computer vision techniques for the detection of exoplanet and star: leveraging contrastive learning in astronomical imagery
Date
2024-11Publisher
BRAC UniversityAuthor
Alif, Ashraful KabirHossain, Sk Jamil
Hossain, Md Impreeaj
Antor, Shihab Shahriar
Roy, Arghya Pranto
Metadata
Show full item recordAbstract
The detection of exoplanets through direct imaging has become increasingly feasible
with the advent of modern telescopes like the James Webb Space Telescope
(JWST) and its MIRI coronagraph. These instruments have significantly expanded
the availability of high-quality direct imaging datasets, offering new opportunities for
astronomical research. However, despite these advances, traditional machine learning
methods, such as Convolutional Neural Networks (CNNs) and Graph Neural
Networks (GNNs), face limitations when applied to exoplanet detection. These limitations
include difficulties in detecting exoplanets that are faint and often obscured
by the bright light of nearby stars, as well as challenges posed by small and imbalanced
datasets. To address these challenges, this thesis introduces a novel machine
learning approach that leverages contrastive learning and few-shot learning. Contrastive
learning is used to improve the distinguishing ability of the model focusing
on separating different celestial objects such as exoplanets and stars. It learns representations
that distinguish between these objects despite the high noise, low contrast
and complex nature of astronomical images. In addition, to address the problem of
few training images, the approach called few-shot learning is used to achieve good
results even when only a few pixel-labeled images of exoplanets are available. The
components of the proposed framework include integration of contrastive learning
with ResNet18 and Siamese Networks followed by experimenting with two YOLO
models. The decision to increase the model’s complexity going to provide higher
accuracy over the simple method in processing noise contexts or in the limited availability
of exoplanet instances. Through the sophisticated learning methodologies
presented in this work, our model achieved an accuracy of 92.16%, significantly enhancing
detection capabilities. By utilizing YOLOv5, our approach also achieved
high performance in Dice Coefficient (1.0 for star and 0.9 for exoplanet) and Intersection
over Union (IoU) metrics (1.0 for star and 0.8 for exoplanet), underscoring
the model’s effectiveness in direct imaging exoplanet detection. This advancement
not only contributes to current astronomy efforts but also enables more powerful
discoveries in the future.