Motion-from-Blur: 3D Shape and Motion Estimation of Motion-blurred
Objects in Videos
- URL: http://arxiv.org/abs/2111.14465v1
- Date: Mon, 29 Nov 2021 11:25:14 GMT
- Title: Motion-from-Blur: 3D Shape and Motion Estimation of Motion-blurred
Objects in Videos
- Authors: Denys Rozumnyi, Martin R. Oswald, Vittorio Ferrari, Marc Pollefeys
- Abstract summary: We propose a method for jointly estimating the 3D motion, 3D shape, and appearance of highly motion-blurred objects from a video.
Experiments on benchmark datasets demonstrate that our method outperforms previous methods for fast moving object deblurring and 3D reconstruction.
- Score: 115.71874459429381
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: We propose a method for jointly estimating the 3D motion, 3D shape, and
appearance of highly motion-blurred objects from a video. To this end, we model
the blurred appearance of a fast moving object in a generative fashion by
parametrizing its 3D position, rotation, velocity, acceleration, bounces,
shape, and texture over the duration of a predefined time window spanning
multiple frames. Using differentiable rendering, we are able to estimate all
parameters by minimizing the pixel-wise reprojection error to the input video
via backpropagating through a rendering pipeline that accounts for motion blur
by averaging the graphics output over short time intervals. For that purpose,
we also estimate the camera exposure gap time within the same optimization. To
account for abrupt motion changes like bounces, we model the motion trajectory
as a piece-wise polynomial, and we are able to estimate the specific time of
the bounce at sub-frame accuracy. Experiments on established benchmark datasets
demonstrate that our method outperforms previous methods for fast moving object
deblurring and 3D reconstruction.
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