Thin Cloud Detection of All-Sky Images Using Markov Random Fields

Thin cloud detection for all-sky images is a challenge in ground-based sky-imaging systems because of low contrast and vague boundaries between cloud and sky regions. We treat cloud detection as a labeling problem based on the Markov random field model. In this model, each pixel is represented by a combined-feature vector that aims at improving the disparity between thin cloud and sky. The distribution of each label in the feature space is defined as a Gaussian model. Spatial information is coded by a generalized Potts model. During the estimation, thin cloud is detected by minimizing the posterior energy with an iterative procedure. Both subjective and objective evaluation results demonstrate higher accuracy of the algorithm compared with some other algorithms.

[1]  E. Pereira,et al.  The Use of Euclidean Geometric Distance on RGB Color Space for the Classification of Sky and Cloud Patterns , 2010 .

[2]  Chunming Li,et al.  Minimization of Region-Scalable Fitting Energy for Image Segmentation , 2008, IEEE Transactions on Image Processing.

[3]  Jitendra Malik,et al.  Normalized cuts and image segmentation , 1997, Proceedings of IEEE Computer Society Conference on Computer Vision and Pattern Recognition.

[4]  Jeff Sabburg,et al.  Improved sky imaging for studies of enhanced UV irradiance , 2004 .

[5]  A Cazorla,et al.  Development of a sky imager for cloud cover assessment. , 2008, Journal of the Optical Society of America. A, Optics, image science, and vision.

[6]  Enio Bueno Pereira,et al.  A Simple Method for the Assessment of the Cloud Cover State in High-Latitude Regions by a Ground-Based Digital Camera , 2006 .

[7]  Stan Z. Li Markov Random Field Modeling in Image Analysis , 2009, Advances in Pattern Recognition.

[8]  Jitendra Malik,et al.  Blobworld: Image Segmentation Using Expectation-Maximization and Its Application to Image Querying , 2002, IEEE Trans. Pattern Anal. Mach. Intell..

[9]  Josep Calbó,et al.  Retrieving Cloud Characteristics from Ground-Based Daytime Color All-Sky Images , 2006 .

[10]  Liangliang Cao,et al.  Image Segmentation by MAP-ML Estimations , 2010, IEEE Transactions on Image Processing.

[11]  Gabriela Palacio,et al.  Unsupervised Classification of SAR Images Using Markov Random Fields and ${\cal G}_{I}^{0}$ Model , 2011, IEEE Geoscience and Remote Sensing Letters.

[12]  J. Besag On the Statistical Analysis of Dirty Pictures , 1986 .