Few-shot Learning for Efficient and Effective Machine Learning Model Adaptation
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Statistical learning techniques have been used to dramatically speed-up keypoint matching by training a classifier to recognize a specific set of keypoints. However, the training itself is usually relatively slow and performed offline. Although methods hav ...
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