Year
2023
File Attachment
Abstract
Information from an x-ray radiograph can identify the presence or absence of components within
a treaty accountable item (TAI). However, the radiograph could contain sensitive information
which a treaty partner does not wish to reveal. Information protection necessitates automated
image processing, without the use of a human inspector, for which no widely accepted methods
yet exist. This study explores deep learning-based computer vision models applied to confirming
presence/absence of components in radiographs for treaty verification behind an information
barrier. Unlike methods that require a reference image of the TAI, the computer vision model is
trained on non-sensitive images, into which the agreed-upon component of interest is
synthetically inserted. Despite training on non-sensitive backgrounds, the model is able to
ultimately identify the presence/absence of the component in a sensitive context.