@article{oai:ynu.repo.nii.ac.jp:00011351, author = {Araki, Yuji and Mita, Kentaro and Ichige, Koichi}, issue = {2}, journal = {IEICE Transactions on Fundamentals of Electronics, Communications and Computer Sciences}, month = {Feb}, note = {We propose an iterative single-image haze-removal method that first divides images with haze into regions in which haze-removal processing is difficult and then estimates the ambient light. The existing method has a problem wherein it often overestimates the amount of haze in regions where there is a large distance between the location the photograph was taken and the subject of the photograph; this problem prevents the ambient light from being estimated accurately. In particular, it is often difficult to accurately estimate the ambient light of images containing white and sky regions. Processing those regions in the same way as other regions has detrimental results, such as darkness or unnecessary color change. The proposed method divides such regions in advance into multiple small regions, and then, the ambient light is estimated from the small regions in which haze removal is easy to process. We evaluated the proposed method through some simulations, and found that the method achieves better haze reduction accuracy even than the state-of-the art methods based on deep learning., Copyright(C)2021 IEICE}, pages = {550--562}, title = {Single Image Haze Removal Using Iterative Ambient Light Estimation with Region Segmentation}, volume = {E104.A}, year = {2021} }