Multiple object decomposition based on independent component analysis of multi-energy x-ray projections

X-ray projection is not effective for representing complex overlapping objects. This paper presents a novel computational framework to decompose X-ray projections into multiple images with non-overlapping objects that are differentiated by their own material compositions. Based on energy-dependent X...

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Hauptverfasser: Dong-Goo Kang, Younghun Sung, SungSu Kim, SeongDeok Lee, ChangYeong Kim
Format: Tagungsbericht
Sprache:eng
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Zusammenfassung:X-ray projection is not effective for representing complex overlapping objects. This paper presents a novel computational framework to decompose X-ray projections into multiple images with non-overlapping objects that are differentiated by their own material compositions. Based on energy-dependent X-ray attenuation characteristics for each material, multiple energy X-ray images are analyzed to obtain material-selective images, which correspond to projections of basis materials that constitute objects. We show that material-selective images can be considered as linear mixtures of independent components that are associated with object-selective images. As a result, multiple objects can be decomposed by independent component analysis (ICA) of material-selective images or ICA of multiple monochromatic energy X-ray images. To demonstrate the concept of the proposed method, we apply it to simulated images based on a 3-D human model.
ISSN:1522-4880
2381-8549
DOI:10.1109/ICIP.2009.5414533