Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
532303 | Pattern Recognition | 2013 | 10 Pages |
The effective measurement of pixel's sharpness is a key factor in multi-focus image fusion. In this paper, a gray image is considered as a two-dimensional surface, and the neighbor distance deduced from the oriented distance in differential geometry is used as a measure of pixel's sharpness, where the smooth image surface is restored by kernel regression. Based on the deduced neighbor distance filter, we construct a multi-scale image analysis framework, and propose a multi-focus image fusion method based on the neighbor distance. The experiments demonstrate that the proposed method is superior to the conventional image fusion methods in terms of some objective evaluation indexes, such as spatial frequency, standard deviation, average gradient, etc.
► We propose a multi-focus image fusion based on the neighbor distance. ► The neighbor distance can effectively measure the sharpness of image pixels with different focus settings. ► The neighbor distance is deduced from oriented distance in differential geometry. ► The smooth image surface is fitted by kernel regression.