A Primal-Dual Reconstruction Algorithm For Fluorescence And Bioluminescence Tomography
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We introduce a new primal-dual reconstruction algorithm for fluorescence and bioluminescence tomography. As often in optical tomography, image reconstruction is performed by optimizing a multi-term convex cost function. Current reconstruction methods emplo ...