Muon Trigger for Mobile Phones

09/25/2017
by   Maxim Borisyak, et al.
0

The CRAYFIS experiment proposes to use privately owned mobile phones as a ground detector array for Ultra High Energy Cosmic Rays. Upon interacting with Earth's atmosphere, these events produce extensive particle showers which can be detected by cameras on mobile phones. A typical shower contains minimally-ionizing particles such as muons. As these particles interact with CMOS image sensors, they may leave tracks of faintly-activated pixels that are sometimes hard to distinguish from random detector noise. Triggers that rely on the presence of very bright pixels within an image frame are not efficient in this case. We present a trigger algorithm based on Convolutional Neural Networks which selects images containing such tracks and are evaluated in a lazy manner: the response of each successive layer is computed only if activation of the current layer satisfies a continuation criterion. Usage of neural networks increases the sensitivity considerably comparable with image thresholding, while the lazy evaluation allows for execution of the trigger under the limited computational power of mobile phones.

READ FULL TEXT

page 6

page 7

research
12/31/2021

Processing Images from Multiple IACTs in the TAIGA Experiment with Convolutional Neural Networks

Extensive air showers created by high-energy particles interacting with ...
research
10/15/2019

Electron Neutrino Energy Reconstruction in NOvA Using CNN Particle IDs

NOvA is a long-baseline neutrino oscillation experiment. It is optimized...
research
03/01/2023

PE-GAN: Prior Embedding GAN for PXD images at Belle II

The pixel vertex detector (PXD) is an essential part of the Belle II det...
research
10/23/2019

Towards Fast Displaced Vertex Finding

Many Standard Model extensions predict metastable massive particles that...
research
08/30/2022

Virtual impactor-based label-free bio-aerosol detection using holography and deep learning

Exposure to bio-aerosols such as mold spores and pollen can lead to adve...
research
12/07/2022

A Neural Network Approach for Selecting Track-like Events in Fluorescence Telescope Data

In 2016-2017, TUS, the world's first experiment for testing the possibil...

Please sign up or login with your details

Forgot password? Click here to reset