Supervision by Registration and Triangulation for Landmark Detection
IEEE Transactions on Pattern Analysis and Machine Intelligence(2021)
摘要
We present supervision by registration and triangulation (SRT), an unsupervised approach that utilizes unlabeled multi-view video to improve the accuracy and precision of landmark detectors. Being able to utilize unlabeled data enables our detectors to learn from massive amounts of unlabeled data freely available and not be limited by the quality and quantity of manual human annotations. To utiliz...
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关键词
Detectors,Annotations,Training,Optical detectors,Three-dimensional displays,Adaptive optics,Optical imaging
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