An Image Dehazing Model considering Multiplicative Noise and Sensor Blur
Author(s) -
P. Jidesh,
A. A. Bini
Publication year - 2014
Publication title -
journal of computational engineering
Language(s) - English
Resource type - Journals
eISSN - 2356-7260
pISSN - 2314-6443
DOI - 10.1155/2014/125356
Subject(s) - deblurring , image restoration , computer vision , computer science , haze , artificial intelligence , multiplicative noise , noise (video) , image (mathematics) , noise reduction , channel (broadcasting) , multiplicative function , transmission (telecommunications) , algorithm , image processing , mathematics , physics , telecommunications , mathematical analysis , signal transfer function , meteorology , analog signal
A restoration model considering the data-dependent multiplicative noise, shift-invariant blur, and haze has been introduced in this paper. The proposed strategy adopts a two-step model to perform a single image dehazing under the blurred and noisy observations. The first step uses the well-known dark channel prior method to estimate the transmission of the medium and atmospheric light that signifies the global color of the haze and dehaze the images. The second step performs denoising and deblurring under a Gamma distributed noise setup and a linear blurring artefact. The restoration under the above mentioned setup has quite a few applications in satellite and long-distant telescopic imaging systems, where the captured images are noisy due to atmospheric pressure turbulence and hazy due to the presence of atmospheric dust formation; further they are blurred due to the common device artefacts. The proposed strategy is tested using a large amount of available image-sets and the performance of the model is analysed in detail in the results section
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