A novel machine learning method to detect double- hypernuclear events in nuclear emulsions

Abstract

A novel method was developed to detect double- hypernuclear events in nuclear emulsions using machine learning techniques. The object detection model, the Mask R-CNN, was trained using images generated by Monte Carlo simulations, image processing, and image-style transformation based on generative adversarial networks. Despite being exclusively trained on 6\ He events, the model achieved a detection efficiency of 93.8\% for 6\ He and 82.0\% for 5\ H events in the produced images. In addition, the model demonstrated its ability to detect the 6\ He event named the Nagara event, which is the only uniquely identified double- hypernuclear event reported to date. It also exhibited a proper segmentation of the event topology. Furthermore, after analyzing 0.2\% of the entire emulsion data from the J-PARC E07 experiment utilizing the developed approach, six new candidates for double- hypernuclear events were detected, suggesting that more than 2000 double-strangeness hypernuclear events were recorded in the entire dataset. This method is sufficiently effective for mining more latent double- hypernuclear events recorded in nuclear emulsion sheets by reducing the time required for manual visual inspection by a factor of five hundred.

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