Deep Generative Models for Detector Signature Simulation: A Taxonomic Review
Baran Hashemi, Claudius Krause

TL;DR
This paper reviews deep generative models used for simulating detector signatures in particle physics, highlighting their methodologies, classifications, and future challenges to improve simulation efficiency.
Contribution
It provides a comprehensive taxonomy of deep generative models for detector signature simulation, unifying various approaches and discussing future research directions.
Findings
Classified models into five categories based on architecture
Summarized generation strategies for each model type
Discussed challenges and future opportunities in the field
Abstract
In modern collider experiments, the quest to explore fundamental interactions between elementary particles has reached unparalleled levels of precision. Signatures from particle physics detectors are low-level objects (such as energy depositions or tracks) encoding the physics of collisions (the final state particles of hard scattering interactions). The complete simulation of them in a detector is a computational and storage-intensive task. To address this computational bottleneck in particle physics, alternative approaches have been developed, introducing additional assumptions and trade off accuracy for speed.The field has seen a surge in interest in surrogate modeling the detector simulation, fueled by the advancements in deep generative models. These models aim to generate responses that are statistically identical to the observed data. In this paper, we conduct a comprehensive and…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis · Radiomics and Machine Learning in Medical Imaging · Simulation Techniques and Applications
