Title :
Improving image quality in poor visibility conditions using a physical model for contrast degradation
Author :
Oakley, John P. ; Satherley, Brenda L.
Author_Institution :
Sch. of Eng., Manchester Univ., UK
fDate :
2/1/1998 12:00:00 AM
Abstract :
In daylight viewing conditions, image contrast is often significantly degraded by atmospheric aerosols such as haze and fog. This paper introduces a method for reducing this degradation in situations in which the scene geometry is known. Contrast is lost because light is scattered toward the sensor by the aerosol particles and because the light reflected by the terrain is attenuated by the aerosol. This degradation is approximately characterized by a simple, physically based model with three parameters. The method involves two steps: first, an inverse problem is solved in order to recover the three model parameters; then, for each pixel, the relative contributions of scattered and reflected flux are estimated. The estimated scatter contribution is simply subtracted from the pixel value and the remainder is scaled to compensate for aerosol attenuation. This paper describes the image processing algorithm and presents an analysis of the signal-to-noise ratio (SNR) in the resulting enhanced image. This analysis shows that the SNR decreases exponentially with range. A temporal filter structure is proposed to solve this problem. Results are presented for two image sequences taken from an airborne camera in hazy conditions and one sequence in clear conditions. A satisfactory agreement between the model and the experimental data is shown for the haze conditions. A significant improvement in image quality is demonstrated when using the contrast enhancement algorithm in conjuction with a temporal filter
Keywords :
aerosols; atmospheric light propagation; electromagnetic wave scattering; image enhancement; image sequences; inverse problems; light reflection; light scattering; optical dispersion; visibility; SNR; aerosol attenuation; aerosol particles; airborne camera; atmospheric aerosols; contrast degradation; daylight viewing conditions; estimated scatter contribution; experimental data; fog; haze; image processing algorithm; image quality improvement; image sequences; inverse problem; model parameters; physical model; pixel; poor visibility conditions; reflected flux; scattered flux; scene geometry; signal-to-noise ratio; temporal filter; terrain; Aerosols; Degradation; Geometry; Image quality; Inverse problems; Layout; Light scattering; Particle scattering; Scattering parameters; Sensor phenomena and characterization;
Journal_Title :
Image Processing, IEEE Transactions on