Expressway visibility estimation based on image entropy and piecewise stationary time series analysis

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 a real-world visibility measure during fog and haze, a subjective assessment was established through a study with 36 subjects who performed visibility observations. Finally, a total of two million videos were used for training the SPEV model and validate its effectiveness. The videos were collected from the constantly foggy and hazy Tongqi expressway in Jiangsu, China. The contrast model of visibility estimation was used for algorithm performance comparison, and the validation results of the SPEV model were encouraging as 99.14% of the relative errors were less than 10%.

[1]  Jimin Yu,et al.  Image Denoising Algorithm Based on Entropy and Adaptive Fractional Order Calculus Operator , 2017, IEEE Access.

[2]  Jean-Philippe Tarel,et al.  Experimental Validation of Dedicated Methods to In-Vehicle Estimation of Atmospheric Visibility Distance , 2008, IEEE Transactions on Instrumentation and Measurement.

[3]  Jean-Philippe Tarel,et al.  Automatic fog detection and estimation of visibility distance through use of an onboard camera , 2006, Machine Vision and Applications.

[4]  Shawn D. Newsam,et al.  Camera-based visibility estimation: Incorporating multiple regions and unlabeled observations , 2014, Ecol. Informatics.

[5]  Yuanyuan Gao,et al.  Real-time visibility distance evaluation based on monocular and dark channel prior , 2015, Int. J. Comput. Sci. Eng..

[6]  Fan Guo,et al.  Visibility detection approach to road scene foggy images , 2016, KSII Trans. Internet Inf. Syst..

[7]  Seungmin Rho,et al.  Structured entropy of primitive: big data-based stereoscopic image quality assessment , 2017, IET Image Process..

[8]  Jean-Philippe Tarel,et al.  Daytime fog detection and density estimation with entropy minimization , 2014 .

[9]  L. M. Bergasa,et al.  Fog detection system based on computer vision techniques , 2009, 2009 12th International IEEE Conference on Intelligent Transportation Systems.

[10]  Rachid Belaroussi,et al.  Road sign-aided estimation of visibility conditions , 2015, 2015 14th IAPR International Conference on Machine Vision Applications (MVA).

[11]  Christoph Busch,et al.  Wavelet Transform for Analyzing Fog Visibility , 1998, IEEE Intell. Syst..

[12]  Dean A. Pomerleau,et al.  Visibility estimation from a moving vehicle using the RALPH vision system , 1997, Proceedings of Conference on Intelligent Transportation Systems.

[13]  Sergiu Nedevschi,et al.  Image based fog detection and visibility estimation for driving assistance systems , 2013, 2013 IEEE 9th International Conference on Intelligent Computer Communication and Processing (ICCP).

[14]  Nicolas Hautière,et al.  Real-time disparity contrast combination for onboard estimation of the visibility distance , 2006, IEEE Transactions on Intelligent Transportation Systems.

[15]  Eric Dumont,et al.  Visibility Monitoring using Conventional Roadside Cameras - Emerging Applications , 2012 .

[16]  Kyung Won Kim,et al.  Estimation of visibility using a visual image , 2015, Environmental Monitoring and Assessment.

[17]  Fátima N. S. de Medeiros,et al.  SAR Image Segmentation With Rényi's Entropy , 2016, IEEE Signal Processing Letters.

[18]  Ling-Feng Shi,et al.  A Fast Image Contrast Enhancement Algorithm Using Entropy-Preserving Mapping Prior , 2019, IEEE Transactions on Circuits and Systems for Video Technology.

[19]  Roland Brémond,et al.  Estimating Meteorological Visibility Using Cameras: A Probabilistic Model-Driven Approach , 2010, ACCV.

[20]  Enrico Magli,et al.  Constant SNR, Rate Control, and Entropy Coding for Predictive Lossy Hyperspectral Image Compression , 2016, IEEE Transactions on Geoscience and Remote Sensing.

[21]  Bernd Jähne,et al.  An Improved Model for Estimating the Meteorological Visibility from a Road Surface Luminance Curve , 2013, GCPR.