USING VARIATIONAL AUTOENCODERS TO ENCODE GALAXY IMAGES IN SEARCH OF NEW GRAVITATIONAL LENS CANDIDATES
Discovering space phenomena such as gravitational lensing among the vast array of space images available today can be a daunting task if done manually. However, it can be made more manageable with the right tools, such as a deep learning-based astronomical image retrieval subsystem developed in t...
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Format: | Final Project |
Language: | Indonesia |
Online Access: | https://digilib.itb.ac.id/gdl/view/76656 |
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Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
Summary: | Discovering space phenomena such as gravitational lensing among the vast array
of space images available today can be a daunting task if done manually. However,
it can be made more manageable with the right tools, such as a deep learning-based
astronomical image retrieval subsystem developed in this final project. To function
effectively, this subsystem requires a deep learning component capable of encoding
astronomical images into vector representations which are retrievable.
Consequently, this project also involves training a type of deep learning model
called variational autoencoder, whose encoder can transform images into vectors.
Our variational autoencoders are trained using a dataset consisting of 88,422 galaxy
images, with 40,500 of them being gravitational lens images. Upon testing against
a validation set, our deep learning-based astronomical image retrieval subsystem
achieves an NDCG score of 0.722. Further testing on unseen and end-to-end data
respectively yields 0.603 and 0.574 NDCG scores. These outcomes indicate that
our deep learning-based astronomical image retrieval subsystem shows tremendous
promise and can be integrated into a gravitational lens candidate search system
based on deep learning principles. |
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