2024 : 4 : 29
Alireza Abdollahpouri

Alireza Abdollahpouri

Academic rank: Associate Professor
ORCID:
Education: PhD.
ScopusId: 36132793800
Faculty: Faculty of Engineering
Address: Faculty of Engineering- Department of Computer - Room 219
Phone: -

Research

Title
An adaptive optic-physic based dust removal method using optimized air-light and transfer function
Type
JournalPaper
Keywords
Image enhancement, Dust removal, Physical-optic model, Transmission function, Air light estimation
Year
2022
Journal MULTIMEDIA TOOLS AND APPLICATIONS
DOI
Researchers Ako Bartani ، Alireza Abdollahpouri ، Mohsen Ramezani ، Fardin Akhlaghian Tab

Abstract

In recent years, computer vision is used in different applications. In these applications, images may be contaminated by different factors such as clouds, shadow, haze, fog, and dust phenomena. The dust phenomenon caused environmental problems in certain regions of the world. This phenomenon, which reduced visibility, acts as a barrier against the object’s light reflection to the eyes or camera lens. There are few studies relating to removing dust from images, while haze removal has received more attention. The haze removal methods have been examined for removing dust that haven’t proper performance. Thus, we propose a new physic-optic based method to remove dust from images properly. Here, the air-light estimation on the dark channel histogram is modified and a new method is used to estimate the weight of the dust-based transmission function per pixel in the R, G, and B channels, separately. Experimental results indicate that the proposed method appropriately removes dust from the images which contain different density of dust. It should be noted that output images have high contrast, good brightness level, and natural colors. Moreover, the proposed method can be used for removing haze from hazy images as a suitable method that achieves better or acceptable results than popular and recent haze removal methods. Experiments indicate that the PCQI value of the proposed method for two dusty datasets is about 1.24 on average, while this value for the best state-of-the-art method is about 1.15 on average. These values for hazy images are 1.33, and 1.15, respectively.