gamma-ray DBSCAN: a clustering algorithm applied to Fermi-LAT gamma-ray data. I. Detection performances with real and simulated data
A. Tramacere (1), C. Vecchio (2) ((1) ISDC, Data Centre for, Astrophysics, Versoix, Switzerland, (2) Politecnico di Milano, Milano, Italy)

TL;DR
This paper introduces a novel application of the DBSCAN clustering algorithm to gamma-ray astrophysical data from Fermi-LAT, demonstrating its effectiveness in detecting sources and rejecting noise through simulated and real data analysis.
Contribution
It is the first to adapt and evaluate the gamma-ray DBSCAN for source detection in gamma-ray images, establishing its detection performance and significance assessment.
Findings
Gamma-ray DBSCAN effectively detects clusters in Fermi-LAT data.
The method's significance correlates with Maximum Likelihood analysis.
Positional accuracy is comparable to standard methods.
Abstract
The Density Based Spatial Clustering of Applications with Noise (DBSCAN) is a topometric algorithm used to cluster spatial data that are affected by background noise. For the first time, we propose the use of this method for the detection of sources in gamma-ray astrophysical images obtained from the Fermi-LAT data, where each point corresponds to the arrival direction of a photon. We investigate the detection performance of the gamma-ray DBSCAN in terms of detection efficiency and rejection of spurious clusters, using a parametric approach, and exploring a large volume of the gamma-ray DBSCAN parameter space. By means of simulated data we statistically characterize the gamma-ray DBSCAN, finding signatures that differentiate purely random fields, from fields with sources. We define a significance level for the detected clusters, and we successfully test this significance with our…
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