Probabilistic Spectral Reconstruction of Trans-Neptunian Objects from Sparse Photometry: A Framework for Taxonomy, Survey Optimization, and Outlier Detection
Hsing Wen Lin, Larissa Markwardt, Kevin J. Napier, Fred C. Adams, Renu Malhotra, David W. Gerdes

TL;DR
This paper introduces a probabilistic framework that reconstructs full near-IR spectra of trans-Neptunian objects from sparse photometry, enabling improved taxonomy, survey design, and outlier detection.
Contribution
It develops a Bayesian latent-space model that captures spectral variability with low-dimensional components, enhancing spectral reconstruction and survey optimization for TNOs.
Findings
4-5 principal components suffice for taxonomic classification
Reconstructed spectra achieve 95% credible-interval coverage
Optimal JWST/NIRCam filters identified for TNO taxonomy
Abstract
Near-infrared (near-IR) spectroscopy provides critical constraints on the surface composition of trans-Neptunian objects (TNOs), but spectroscopic observations remain limited compared to broadband photometry. We develop a probabilistic latent-space framework to quantify how much spectral information is retained in sparse photometric measurements. Using a principal component representation trained on a sample of near-IR spectra, we model the spectral manifold of TNOs and perform Bayesian inference in this reduced space to reconstruct full spectra from photometry while propagating uncertainties. Leave-one-out cross-validation demonstrates that the dominant modes of spectral variability are low-dimensional: 4 to 5 principal components capture the structure relevant for taxonomic classification, while 8-10 components improve spectral reconstruction fidelity and uncertainty calibration. For…
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