A maximum-likelihood-based technique for detecting extended gamma-ray sources with VERITAS
Alisha Chromey

TL;DR
This paper presents a maximum-likelihood-based method for detecting and analyzing extended gamma-ray sources with VERITAS, improving sensitivity and background estimation for large or complex sources in gamma-ray astronomy.
Contribution
The paper introduces a novel maximum likelihood technique tailored for IACT data that enhances detection sensitivity for extended gamma-ray sources and incorporates gamma-hadron separation parameters.
Findings
Improved sensitivity to extended gamma-ray sources.
Effective background estimation without source-free regions.
Enhanced analysis of complex, overlapping sources.
Abstract
Gamma-ray observations ranging from hundreds of MeV to tens of TeV are a valuable tool for studying particle acceleration and diffusion within our galaxy. Supernova remnants, pulsar wind nebulae, and star-forming regions are the main particle accelerators in our local Galaxy. Constructing a coherent physical picture of these astrophysical objects requires the ability to distinguish extended regions of gamma-ray emission, the ability to analyze small-scale spatial variation within these regions, and methods to synthesize data from multiple observatories across multiple wavebands. Imaging Atmospheric Cherenkov Telescopes (IACTs) provide fine angular resolution (<0.1 degree) for gamma-rays above 100 GeV. Typical data reduction methods rely on source-free regions in the field of view to estimate cosmic-ray background. This presents difficulties for sources with unknown extent or those which…
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