资源论文Burst Deblurring: Removing Camera Shake Through Fourier Burst Accumulation

Burst Deblurring: Removing Camera Shake Through Fourier Burst Accumulation

2019-12-17 | |  65 |   50 |   0

Abstract

Numerous recent approaches attempt to remove image blur due to camera shake, either with one or multiple input images, by explicitly solving an inverse and inherently ill-posed deconvolution problem. If the photographer takes a burst of images, a modality available in virtually all modern digital cameras, we show that it is possible to combine them to get a clean sharp version. This is done without explicitly solving any blur estimation and subsequent inverse problem. The proposed algorithm is strikingly simple: it performs a weighted average in the Fourier domain, with weights depending on the Fourier spectrum magnitude. The methods rationale is that camera shake has a random nature and therefore each image in the burst is generally blurred difffferently. Experiments with real camera data show that the proposed Fourier Burst Accumulation algorithm achieves state-of-the-art results an order of magnitude faster, with simplicity for on-board implementation on camera phones

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