JSAI2025

Presentation information

General Session

General Session » GS-10 AI application

[3E1-GS-10] AI application:

Thu. May 29, 2025 9:00 AM - 10:40 AM Room E (Room 1101-2)

座長:中村拓紀(パナソニック)

9:00 AM - 9:20 AM

[3E1-GS-10-01] Transformer-based Space Debris Classifier using Observational Light Curves

〇Yuki Wata1, Ryo Ueda1, Yusuke Miyao1,2 (1. The University of Tokyo, 2. National Institute of Informatics Research and Development Center for Large Language Models)

Keywords:Space Debris Classification, Transformer, Light Curves, Machine Learning

We address space debris classification using light curves. Light curves, time-series data recording the apparent magnitude of debris observed by optical telescopes, are widely used for identifying debris types. In previous studies, 1D-CNNs were the mainstream classifiers for space debris, where they were pre-trained on light curves generated through simulations and fine-tuned using observational light curves. However, CNNs have limitations in capturing long-term temporal dependencies, and simulated models cannot fully replicate real-world observational conditions, leading to discrepancies between simulated and observed light curves. To address these challenges, we propose a Transformer-based space debris classifier and introduce a pre-training method utilizing observational light curves. Experiments show that the F1 score of the Transformer classifier improves by 30% compared to the baseline 1D-CNN. Additionally, pre-training with observational light curves leads to an improvement of 7.8% in F1 score.

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