Expressway visibility estimation based on image entropy and piecewise stationary time series analysis
Xiaogang Cheng, Guoqing Liu, Anders Hedman, Kun Wang, Haibo Li

TL;DR
This paper introduces a novel data-driven method for estimating atmospheric visibility using Gaussian image entropy and piecewise stationary time series analysis, achieving high accuracy in foggy and hazy conditions.
Contribution
First application of Gaussian image entropy for visibility estimation, combined with piecewise stationary time series analysis and ROI to improve accuracy.
Findings
99.14% of relative errors less than 10%
Used 2 million videos for training and validation
Effective in foggy and hazy conditions
Abstract
Vision-based methods for visibility estimation can play a critical role in reducing traffic accidents caused by fog and haze. To overcome the disadvantages of current visibility estimation methods, we present a novel data-driven approach based on Gaussian image entropy and piecewise stationary time series analysis (SPEV). This is the first time that Gaussian image entropy is used for estimating atmospheric visibility. To lessen the impact of landscape and sunshine illuminance on visibility estimation, we used region of interest (ROI) analysis and took into account relative ratios of image entropy, to improve estimation accuracy. We assume fog and haze cause blurred images and that fog and haze can be considered as a piecewise stationary signal. We used piecewise stationary time series analysis to construct the piecewise causal relationship between image entropy and visibility. To obtain…
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Taxonomy
TopicsImage Enhancement Techniques · Wind and Air Flow Studies · Urban Heat Island Mitigation
