Burst ranking for blind multi-image deblurring
We propose a new incremental aggregation algorithm for multi-image deblurring with automatic image selection. The primary motivation is that current bursts deblurring methods do not handle well situations in which misalignment or out-of-context frames are present in the burst. These real-life situat...
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Zusammenfassung: | We propose a new incremental aggregation algorithm for multi-image deblurring
with automatic image selection. The primary motivation is that current bursts
deblurring methods do not handle well situations in which misalignment or
out-of-context frames are present in the burst. These real-life situations
result in poor reconstructions or manual selection of the images that will be
used to deblur. Automatically selecting best frames within the burst to improve
the base reconstruction is challenging because the amount of possible images
fusions is equal to the power set cardinal. Here, we approach the multi-image
deblurring problem as a two steps process. First, we successfully learn a
comparison function to rank a burst of images using a deep convolutional neural
network. Then, an incremental Fourier burst accumulation with a reconstruction
degradation mechanism is applied fusing only less blurred images that are
sufficient to maximize the reconstruction quality. Experiments with the
proposed algorithm have shown superior results when compared to other similar
approaches, outperforming other methods described in the literature in
previously described situations. We validate our findings on several synthetic
and real datasets. |
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DOI: | 10.48550/arxiv.1810.12121 |