
@Article{jrm.2022.018262,
AUTHOR = {Zhe Yu, Bangyong Sun, Di Liu, Vincent Whannou de Dravo, Margarita Khokhlova, Siyuan Wu},
TITLE = {STRASS Dehazing: Spatio-Temporal Retinex-Inspired Dehazing by an Averaging of Stochastic Samples},
JOURNAL = {Journal of Renewable Materials},
VOLUME = {10},
YEAR = {2022},
NUMBER = {5},
PAGES = {1381--1395},
URL = {http://www.techscience.com/jrm/v10n5/46053},
ISSN = {2164-6341},
ABSTRACT = {In this paper, we propose a neoteric and high-efficiency single image dehazing algorithm via contrast enhancement which is called STRASS (Spatio-Temporal Retinex-Inspired by an Averaging of Stochastic Samples) dehazing, it is realized by constructing an efficient high-pass filter to process haze images and taking the influence of human vision system into account in image dehazing principles. The novel high-pass filter works by getting each pixel using RSR and computes the average of the samples. Then the low-pass filter resulting from the minimum envelope in STRESS framework has been replaced by the average of the samples. The final dehazed image is yielded after iterations of the high-pass filter. STRASS can be run directly without any machine learning. Extensive experimental results on datasets prove that STRASS surpass the state-of-the-arts. Image dehazing can be applied in the field of printing and packaging, our method is of great significance for image pre-processing before printing.},
DOI = {10.32604/jrm.2022.018262}
}



