Faint Object Detection in Multi-Epoch Observations via Catalog Data Fusion
Tamas Budavari, Alexander S. Szalay, Thomas J. Loredo

TL;DR
This paper introduces a Bayesian probabilistic method for faint object detection in multi-epoch astronomical surveys using catalog data, improving detection efficiency without stacking images.
Contribution
It presents a novel Bayesian approach for combining single-epoch catalog data to detect faint objects, offering an alternative to traditional image stacking methods.
Findings
Probabilistic catalog fusion achieves comparable detection sensitivity to stacking.
The method effectively distinguishes real objects from noise across multiple epochs.
Detection probability improves with multiple observations, even with modest sensitivity loss.
Abstract
Observational astronomy in the time-domain era faces several new challenges. One of them is the efficient use of observations obtained at multiple epochs. The work presented here addresses faint object detection with multi-epoch data, and describes an incremental strategy for separating real objects from artifacts in ongoing surveys, in situations where the single-epoch data are summaries of the full image data, such as single-epoch catalogs of flux and direction estimates for candidate sources. The basic idea is to produce low-threshold single-epoch catalogs, and use a probabilistic approach to accumulate catalog information across epochs; this is in contrast to more conventional strategies based on co-added or stacked image data across all epochs. We adopt a Bayesian approach, addressing object detection by calculating the marginal likelihoods for hypotheses asserting there is no…
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