Quality Estimation Based Multi-Focus Image Fusion

2017 IEEE INTERNATIONAL CONFERENCE ON ACOUSTICS, SPEECH AND SIGNAL PROCESSING (ICASSP)(2017)

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摘要
In this work, a quality estimation based multi-focus image fusion method (QEBIF) is proposed. In this method, the all-in-focus image is generated by pixel-wise summarizing the multi-focus images with their estimated focus levels as weights. Since the visual quality of an image is highly correlated with its focus level, the visual quality is estimated to be the pre-measurements of focus levels. Via the guided filter, the pre-measurements are smoothed to form the final- measurement with edges in the multi-focus images preserved simultaneously. In addition, the confidence map is proposed to measure the reliability of different local regions. Experiments show that QEBIF method outperforms the other fusion methods, and its fusion results can well maintain the detailed information in the multi-focus images without suffering the ringing or blocking artifacts.
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关键词
Multi-focus image fusion, visual quality, confidence map, guided filter
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