Document detail
ID

oai:arXiv.org:2409.01825

Topic
Computer Science - Computer Vision... Astrophysics - Astrophysics of Gal... Astrophysics - Instrumentation and... Computer Science - Computational E... Computer Science - Machine Learnin...
Author
Fathkouhi, Amirreza Dolatpour Fox, Geoffrey Charles
Category

sciences: astrophysics

Year

2024

listing date

9/11/2024

Keywords
vision architecture science data computer encoder astrophysics
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Abstract

Redshift prediction is a fundamental task in astronomy, essential for understanding the expansion of the universe and determining the distances of astronomical objects.

Accurate redshift prediction plays a crucial role in advancing our knowledge of the cosmos.

Machine learning (ML) methods, renowned for their precision and speed, offer promising solutions for this complex task.

However, traditional ML algorithms heavily depend on labeled data and task-specific feature extraction.

To overcome these limitations, we introduce AstroMAE, an innovative approach that pretrains a vision transformer encoder using a masked autoencoder method on Sloan Digital Sky Survey (SDSS) images.

This technique enables the encoder to capture the global patterns within the data without relying on labels.

To the best of our knowledge, AstroMAE represents the first application of a masked autoencoder to astronomical data.

By ignoring labels during the pretraining phase, the encoder gathers a general understanding of the data.

The pretrained encoder is subsequently fine-tuned within a specialized architecture tailored for redshift prediction.

We evaluate our model against various vision transformer architectures and CNN-based models, demonstrating the superior performance of AstroMAEs pretrained model and fine-tuning architecture.

;Comment: This paper has been accepted to 2024 IEEE 20th International Conference on e-Science

Fathkouhi, Amirreza Dolatpour,Fox, Geoffrey Charles, 2024, AstroMAE: Redshift Prediction Using a Masked Autoencoder with a Novel Fine-Tuning Architecture

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