Hybrid Synthesis For Exposure Fusion From Hand-Held Camera Inputs

2019 IEEE INTERNATIONAL CONFERENCE ON IMAGE PROCESSING (ICIP)(2019)

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摘要
The paper proposes a hybrid synthesis method for multi-exposure image fusion taken by hand-held cameras. Motions either due to the shaky cameras or caused by dynamic scenes should be compensated before any content fusion. The misalignment will cause blurring/ghosting artifacts in the fused result. The proposed method can deal with such motions and maintain the exposure information of each input effectively. In particular, the proposed method first applies optical flow for a coarse registration, which performs well with complex non-rigid motion but produces deformations at regions with missing correspondences. To correct such error registration, we segment images into superpixels and identify problematic alignments based on each superpixel, which is further aligned by PatchMatch. After that, the proposed method obtains a fully aligned image stack which facilitates a high-quality fusion that is free from blurring/ghosting artifacts. We compare our method with existing fusion algorithms on various challenging examples, including the static/dynamic, the indoor/outdoor and the daytime/nighttime scenes. Experiment results demonstrate the effectiveness and robustness.
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关键词
Multi-exposure fusion, optical flow, patch match
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