Title :
Exponential Contrast Restoration in Fog Conditions for Driving Assistance
Author :
Negru, Mihai ; Nedevschi, Sergiu ; Peter, Radu Ioan
Author_Institution :
Dept. of Comput. Sci., Image Process. & Pattern Recognition Group, Tech. Univ. of Cluj-Napoca, Cluj-Napoca, Romania
Abstract :
The images captured in fog conditions have degraded contrast, which makes current image processing applications sensitive and error prone. We propose in this paper an efficient single-image enhancement algorithm suitable for daytime fog conditions and, based on an original mathematical model, for computing the atmospheric veil, taking into account the variation in fog density to the distance. This model is inspired by the functions that appear in partition of unity in the differential geometry field. When observing images captured in fog conditions, usually the fog has a very low density in front of the camera and this density has a nonlinear increase with the distance, such that objects are no longer visible at greater distances. By using our mathematical model, we are able to obtain superior reconstructions of the original fog-free image when compared with traditional methods. Another advantage of our method is the ability to adapt the model in accordance to the density of the fog. A quantitative and qualitative evaluation is performed on both synthetic and real camera images. This evaluation proves that our mathematical model is more suitable for contrast restoration in both homogeneous and heterogeneous fog conditions. Our algorithm is able to perform contrast restoration in real time for both color and grayscale images.
Keywords :
driver information systems; geometry; image colour analysis; image enhancement; image restoration; atmospheric veil; camera images; color images; daytime fog conditions; differential geometry field; driving assistance; exponential contrast restoration; grayscale images; heterogeneous fog conditions; image processing applications; mathematical model; single-image enhancement algorithm; Atmospheric modeling; Cameras; Equations; Image reconstruction; Image restoration; Mathematical model; Roads; Fog; image analysis; image enhancement; image processing; image reconstruction; image restoration; weather conditions;
Journal_Title :
Intelligent Transportation Systems, IEEE Transactions on
DOI :
10.1109/TITS.2015.2405013