{"id":666549,"date":"2020-06-13T17:08:22","date_gmt":"2020-06-14T00:08:22","guid":{"rendered":"https:\/\/www.microsoft.com\/en-us\/research\/?post_type=msr-research-item&p=666549"},"modified":"2020-06-13T17:08:22","modified_gmt":"2020-06-14T00:08:22","slug":"self-supervised-human-depth-estimation-from-monocular-videos","status":"publish","type":"msr-research-item","link":"https:\/\/www.microsoft.com\/en-us\/research\/publication\/self-supervised-human-depth-estimation-from-monocular-videos\/","title":{"rendered":"Self-Supervised Human Depth Estimation From Monocular Videos"},"content":{"rendered":"

Previous methods on estimating detailed human depth often require supervised training with `ground truth’ depth data. This paper presents a self-supervised method that can be trained on YouTube videos without known depth, which makes training data collection simple and improves the generalization of the learned network. The self-supervised learning is achieved by minimizing a photo-consistency loss, which is evaluated between a video frame and its neighboring frames warped according to the estimated depth and the 3D non-rigid motion of the human body. To solve this non-rigid motion, we first estimate a rough SMPL model at each video frame and compute the non-rigid body motion accordingly, which enables self-supervised learning on estimating the shape details. Experiments demonstrate that our method enjoys better generalization and performs much better on data in the wild.<\/p>\n","protected":false},"excerpt":{"rendered":"

Previous methods on estimating detailed human depth often require supervised training with `ground truth’ depth data. This paper presents a self-supervised method that can be trained on YouTube videos without known depth, which makes training data collection simple and improves the generalization of the learned network. The self-supervised learning is achieved by minimizing a photo-consistency 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