2020
DOI: 10.48550/arxiv.2012.04515
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Digital Gimbal: End-to-end Deep Image Stabilization with Learnable Exposure Times

Abstract: Mechanical image stabilization using actuated gimbals enables capturing long-exposure shots without suffering from blur due to camera motion. These devices, however, are often physically cumbersome and expensive, limiting their widespread use. In this work, we propose to digitally emulate a mechanically stabilized system from the input of a fast unstabilized camera. To exploit the trade-off between motion blur at long exposures and low SNR at short exposures, we train a CNN that estimates a sharp high-SNR imag… Show more

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