USSR: An UltraSound Sparse Regularization framework
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Updated
Sep 7, 2017 - Python
Medical imaging is the technique and process of creating visual representations of the interior of a body for clinical analysis, and medical intervention.
USSR: An UltraSound Sparse Regularization framework
A Deep Learning Approach to Ultrasound Image Recovery
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API for multi-class classification of ultrasound images. The JSON response allows to print the probability of each class