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Publication Type : Conference Paper
Publisher : IEEE
Source : 2026 International Conference on AI-Driven Smart Systems and Ubiquitous Computing (ICAUC)
Url : https://doi.org/10.1109/icauc68182.2026.11441314
Campus : Coimbatore
School : School of Engineering
Department : Electrical and Electronics
Year : 2026
Abstract :
The increasing number of objects in Earth’s orbit is raising serious safety concerns for space assets and missions. This paper presents development, analysis and selection of a suitable deep learning framework among U-Net and convolutional autoencoder, for the identification of space debris and other irregular structures in astronomical imagery. A publicly available multi-class visible spectrum astronomical dataset is preprocessed using a two-stage enhancement pipeline: CLAHE to amplify faint features, and bilateral filtering to dwindle noise while retaining sharp edges. The convolutional autoencoder, trained exclusively on synthetic visible spectrum images, learns latent representations of normal space observations. Anomaly scores derived from reconstruction errors are used to detect deviations from these learned patterns. Cross-domain generalization is validated using real James Webb Space Telescope infrared images, preprocessed via asinh scaling, and false-colour mapping to unify input representation. The spectrum-agnostic deep learning approach for anomaly detection is analyzed for different images under visible and infrared domains for its satisfactory performance.
Cite this Research Publication : Shakthi S, Lekshmi R. R, Spectrum-Agnostic Space Debris Detection with Autoencoders, 2026 International Conference on AI-Driven Smart Systems and Ubiquitous Computing (ICAUC), IEEE, 2026, https://doi.org/10.1109/icauc68182.2026.11441314