Supervision by Registration and Triangulation for Landmark Detection
Abstract
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 utilize unlabeled data, there are two key observations: (I) the detections of the same landmark in adjacent frames should be coherent with registration, i.e., optical flow. (II) the detections of the same landmark in multiple synchronized and geometrically calibrated views should correspond to a single 3D point, i.e., multi-view consistency. Registration and multi-view consistency are sources of supervision that do not require manual labeling, thus it can be leveraged to augment existing training data
during detector training. End-to-end training is made possible by differentiable registration and 3D triangulation modules. Experiments with 11 datasets and a newly proposed metric to measure precision demonstrate accuracy and precision improvements in landmark detection on both images and video.
BibTeX
@article{Dong-2020-122750,author = {Xuanyi Dong and Yi Yang and Shih-En Wei and Xinshuo Weng and Yaser Sheikh and Shoou-I Yu},
title = {Supervision by Registration and Triangulation for Landmark Detection},
journal = {IEEE Transactions on Pattern Analysis and Machine Intelligence},
year = {2020},
month = {March},
keywords = {Landmark Detection, Optical Flow, Triangulation, Deep Learning},
}