Affiliation:
1. Nylers Ltd.
2. University of Siegen
3. Nikon X-Tek Systems Ltd.
Abstract
Recent innovations in x-ray technology (namely phase-based and
energy-resolved imaging) offer unprecedented opportunities for
material discrimination; however, they are often used in isolation or
in limited combinations. Here we show that the optimized combination
of contrast channels (attenuation at three x-ray energies, ultra-small
angle scattering at two, standard deviation of refraction)
significantly enhances material identification abilities compared to
dual-energy x-ray imaging alone, and that a combination of
off-the-shelf machine learning approaches can effectively
discriminate, e.g., threat materials, in complex datasets. The
methodology is validated on a range of materials and image datasets
that are both an order of magnitude larger than those used in previous
studies. Our results can provide an effective methodology to
discriminate, and in some cases identify, different materials in
complex imaging scenarios, with prospective applications across the
life and physical sciences. While the detection of threat materials is
used as a demonstrator here, the methodology could be equally applied
to, e.g., the distinction between diseased and healthy tissues or
degraded vs. pristine materials.
Funder
Royal Academy of
Engineering
Home Office
Engineering and Physical Sciences
Research Council