Computer Vision for Medical Infant Motion Analysis: State of the Art and RGB-D Data Set
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Michael Arens | Ulrich G. Hofmann | Nikolas Hesse | Raphael Weinberger | Christoph Bodensteiner | A. Sebastian Schroeder | U. Hofmann | Michael Arens | Nikolas Hesse | A. Schroeder | R. Weinberger | C. Bodensteiner
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