Author_Institution :
Dept. of Comput. Sci. & Inf. Eng., Chung Hua Univ., Hsinchu, Taiwan
Abstract :
In our daily life, digital cameras and smart phones have been widely used to take pictures. However, digital cameras and smart phones have a limited dynamic range, which is much lower than that human eyes can perceive. Thus, the photographs taken in high dynamic range scenes often exhibit under-exposure or over-exposure artifacts in shadow or highlight regions. In this study, an image fusion based approach, called classified virtual exposure image fusion (CVEIF), is proposed for image enhancement. First, a function imitating the F-stop concept in photography is designed to generate several virtual images having different intensity. Then, a classified image fusion method, which blends pixels in distinct luminance classes using different fusion functions, is proposed to produce a fused image in which every image region is well exposed. Experimental results on four different kinds of generic images, including a normal image, a low-contrast images, a backlight image, and a dark scene image, have shown that the proposed CVEIF approach produced more pleasingly enhanced images than other methods.
Keywords :
image classification; image enhancement; image fusion; photography; video cameras; CVEIF; F-stop concept; backlight imaging; classified virtual exposure image fusion; dark scene imaging; digital camera; distinct luminance class; image contrast enhancement; low-contrast imaging; over-exposure artifact; photography; smart phone; under-exposure artifact; Brightness; Digital cameras; Discrete wavelet transforms; Dynamic range; Image fusion; Weight measurement; Classified virtual exposure image fusion; contrast enhancement; exposure fusion; image fusion;