Evaluating Generative Adversarial Networks for particle hit generation in a cylindrical drift chamber using Fréchet Inception Distance

I. Andreou and N. Mouelle

Department of Physics, Imperial College London, Prince Consort Road,London,United Kingdom

JINST 18 (2023) 06, P06007
7/7/23

We use Fréchet Inception Distance (FID) measured in the latent spaces of pre-trained, fine-tuned and custom-made inception networks to evaluate Generative Adversarial Networks (GANs) developed by the COherent Muon to Electron Transition (COMET) collaboration to generate sequences of background hits in a Cylindrical Drift Chamber (CDC). We validate the convergence of the GANs' training and show that the use of self-attention layers reduces FID. Our method enables the use of FID as an evaluation metric even when an application-specific inception network is not readily available, making it transferable to other GAN applications in High Energy Physics.

Settings
evaluating-generative-adversarial-networks-for-particle-hit-generation-in-a-cylindrical-drift-chamber-using-frechet-inception-distance
Contents