TimeReplayer: Unlocking the Potential of Event Cameras for Video Interpolation

Record high-FPS fast motion using low-FPS videos from commodity cameras and event cameras!

Accepted by CVPR 2022

abstract

Recording fast motion in a high FPS (frame-per-second) requires expensive high-speed cameras. As an alternative, interpolating low-FPS videos from commodity cameras has attracted significant attention. If only low-FPS videos are available, motion assumptions (linear or quadratic) are necessary to infer intermediate frames, which fail to model complex motions. Event camera, a new camera with pixels producing events of brightness change at the temporal resolution of microseconds, is a game-changing device to enable video interpolation at the presence of arbitrarily complex motion. Since event camera is a novel sensor, its potential has not been fulfilled due to the lack of processing algorithms. The pioneering work Time Lens introduced event cameras to video interpolation by designing optical devices to collect a large amount of paired training data of high-speed frames and events, which is too costly to scale. To fully unlock the potential of event cameras, this paper proposes a novel TimeReplayer algorithm to interpolate videos captured by commodity cameras with events. It is trained in an unsupervised cycle-consistent style, canceling the necessity of high-speed training data and bringing the additional ability of video extrapolation. Its state-of-the-art results and demo videos in supplementary reveal the promising future of event-based vision.

The proposed TimeReplayer model architecture with event stream


Temporal cycle consistency.

Visual comparison on the Adobe240 and GoPro datasets with synthetic events.

Visual comparison on the HQF dataset with real events.

citation:


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@article{he2022timereplayer,

title={TimeReplayer: Unlocking the Potential of Event Cameras for Video Interpolation},

author={He, Weihua and You, Kaichao and Qiao, Zhendong and Jia, Xu and Zhang, Ziyang and Wang, Wenhui and Lu, Huchuan and Wang, Yaoyuan and Liao, Jianxing},

journal={IEEE Conference on Computer Vision and Pattern Recognition (CVPR)},

year={2022}

}