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arxiv: 1612.06096 · v2 · pith:25XTMVYJnew · submitted 2016-12-19 · 💻 cs.CV

X-ray In-Depth Decomposition: Revealing The Latent Structures

classification 💻 cs.CV
keywords x-rayimaginganatomyapplicationsapproachaspectsavailablebroad
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X-ray radiography is the most readily available imaging modality and has a broad range of applications that spans from diagnosis to intra-operative guidance in cardiac, orthopedics, and trauma procedures. Proper interpretation of the hidden and obscured anatomy in X-ray images remains a challenge and often requires high radiation dose and imaging from several perspectives. In this work, we aim at decomposing the conventional X-ray image into d X-ray components of independent, non-overlapped, clipped sub-volumes using deep learning approach. Despite the challenging aspects of modeling such a highly ill-posed problem, exciting and encouraging results are obtained paving the path for further contributions in this direction.

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