End-to-end Differentiable Calibration and Reconstruction for Optical Particle Detectors
- URL: http://arxiv.org/abs/2602.24129v1
- Date: Fri, 27 Feb 2026 16:06:08 GMT
- Title: End-to-end Differentiable Calibration and Reconstruction for Optical Particle Detectors
- Authors: Omar Alterkait, César Jesús-Valls, Ryo Matsumoto, Patrick de Perio, Kazuhiro Terao,
- Abstract summary: Analyses in experimental physics rely on high-fidelity simulators to translate sensor-level information into physical quantities of interest.<n>We present the first end-to-end differentiable optical particle detector simulator, enabling simultaneous calibration and reconstruction.<n>Our approach achieves simulation, calibration, and tracking, which are traditionally treated as separate problems, within a single differentiable framework.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Large-scale homogeneous detectors with optical readouts are widely used in particle detection, with Cherenkov and scintillator neutrino detectors as prominent examples. Analyses in experimental physics rely on high-fidelity simulators to translate sensor-level information into physical quantities of interest. This task critically depends on accurate calibration, which aligns simulation behavior with real detector data, and on tracking, which infers particle properties from optical signals. We present the first end-to-end differentiable optical particle detector simulator, enabling simultaneous calibration and reconstruction through gradient-based optimization. Our approach unifies simulation, calibration, and tracking, which are traditionally treated as separate problems, within a single differentiable framework. We demonstrate that it achieves smooth and physically meaningful gradients across all key stages of light generation, propagation, and detection while maintaining computational efficiency. We show that gradient-based calibration and reconstruction greatly simplify existing analysis pipelines while matching or surpassing the performance of conventional non-differentiable methods in both accuracy and speed. Moreover, the framework's modularity allows straightforward adaptation to diverse detector geometries and target materials, providing a flexible foundation for experiment design and optimization. The results demonstrate the readiness of this technique for adoption in current and future optical detector experiments, establishing a new paradigm for simulation and reconstruction in particle physics.
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