We report on a novel application of computer vision techniques to extract beyond the Standard Model parameters directly from high energy physics flavor data. We propose a novel data representation that transforms the angular and kinematic distributions into ``quasi-images", which are used to train a convolutional neural network to perform regression tasks, similar to fitting. As a proof-of-concept, we train a 34-layer Residual Neural Network to regress on these images and determine information about the Wilson Coefficient C9 in Monte Carlo simulations of B0→K∗0μ+μ− decays. The method described here can be generalized and may find applicability across a variety of experiments.
@article{arxiv.2311.13060,
title = {Training 3D ResNets to Extract BSM Physics Parameters from Simulated Data},
author = {S. Dubey and T. E. Browder and S. Kohani and R. Mandal and A. Sibidanov and R. Sinha},
journal= {arXiv preprint arXiv:2311.13060},
year = {2025}
}