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Related research

Diamond Light Source facility

Diffuse multiple scattering analysis

Analysing complex multi-phase materials using X-ray scattering and machine learning

Ocean clouds from space

Masking clouds in satellite imagery

Using machine learning techniques to classify cloudy pixels from satellite images to aid more accurate monitoring of remotely sensed environmental and climate variables

ISIS Neutron and Muon Source facility

Radiation detectors and machine learning

Developing a machine learning approach to discriminating between different types of radiation in cutting edge scintillator detectors

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