Identification of known objects in solar system surveys
Andrea Milani, Zoran Knezevic, Davide Farnocchia, Fabrizio Bernardi,, Robert Jedicke, Larry Denneau, Richard J. Wainscoat, William Burgett, Tommy, Grav, Nick Kaiser, Eugene Magnier, Paul A. Price

TL;DR
This paper presents an improved attribution algorithm for known solar system objects that accounts for biases in astrometric data, achieving high accuracy and low false attribution rates in asteroid surveys.
Contribution
The work introduces a novel attribution method with enhanced quality control and bias correction, significantly reducing false positives in asteroid identification.
Findings
False attribution rate < 0.1% with simple conditions
Bias correction improves astrometric accuracy
Attribution efficiency approaches 100%
Abstract
The discovery of new objects in modern wide-field asteroid and comet surveys can be enhanced by first identifying observations belonging to known solar system objects. The assignation of new observations to a known object is an attribution problem that occurs when a least squares orbit already exists for the object but a separate fit is not possible to just the set of new observations. In this work we explore the strongly asymmetric attribution problem in which the existing least squares orbit is very well constrained and the new data are sparse. We describe an attribution algorithm that introduces new quality control metrics in the presence of strong biases in the astrometric residuals. The main biases arise from the stellar catalogs used in the reduction of asteroid observations and we show that a simple debiasing with measured regional catalog biases significantly improves the…
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Taxonomy
TopicsAstro and Planetary Science · Astronomical Observations and Instrumentation
