Image dehazing based on dark channel prior and brightness enhancement for agricultural monitoring
Abstract
Keywords: agricultural monitoring, image dehazing, monitoring image, dark channel prior (DCP), brightness promoting
DOI: 10.25165/j.ijabe.20181102.3357
Citation: Wang X Y, Yang C H, Zhang J, Song H B. Image dehazing based on dark channel prior and brightness enhancement for agricultural monitoring. Int J Agric & Biol Eng, 2018; 11(2): 170–176.
Keywords
Full Text:
PDFReferences
Wang Y P. Application of dynamic feature extraction in precision agriculture. China University of Science and Technology, 2015.
Wu D, Zhu Q S. The latest research progress of image fogging. Journal of Automation, 2015; 2: 221–239.
Han H F. Design of remote monitoring and management system for agricultural environmental information. Chinese Academy of Agricultural Sciences, 2009.
Ren F D. Research on image de-hazing algorithm. Jilin University, 2015.
Yu J, Xu D B, Liao Q M. Research progress of image de-hazing technology. Journal of Image and Graphics, 2011; 16(9): 1561–1576.
Guo P, Cai Z X, Xie B, Tang J. Review and prospect of image de-hazing technology. Computer Application, 2010; 30(9): 2417–2421.
Zhang Y L. An image-enhanced de-hazing method and its implementation. Electronic World, 2015(21): p. 106–107.
Yang L C, Li B, Fan C, Jia C Q, Realization of Fast Foggy Algorithm Based on Image Enhancement. Electronic technology, 2015; 7: 30–32, 29.
Li Y, Zhang Y F, Zhang Q, Geng A H, Chen J, Infrared Image Contrast Enhancement Based on De-hazing Model. Chinese laser, 2015(01): p. 306–314.
Narasimhan S G, Nayar S K. Vision and the atmosphere. International Journal of Computer Vision, 2002; 48(3): 233–254.
Nayar S K, Narasimhan S G. Vision in bad weather. in Proceedings of the International Conference on Computer Vision, IEEE Computer Society, 1999; Vol 2, p.820.
He K, Sun J, Tang X. Single image haze removal using dark channel prior. IEEE Transactions on Pattern Analysis & Machine Intelligence, 2010; 33(12): 2341–2353.
Xiao C, Gan J. Fast image de-hazing using guided joint bilateral filter. The Visual Computer, 2012; 28(6-8): 713–721.
Chen P F, Guo J K, Sung C C, Chang HH. An Improved Dark Channel-Based Algorithm for Underwater Image Restoration. 2014; 152: 311–316.
Zhao Y, Yi C, Kong S G, Pan Q, Cheng Y. 3D Reconstruction and Dehazing with Polarization Vision[M]// Multi-band Polarization Imaging and Applications. Springer Berlin Heidelberg, 2016.
Ansia S, Aswathy A L. Single Image Haze Removal Using White Balancing and Saliency Map. Procedia Computer Science, 2015; 46: 12–19.
Graves N, Newsam S. Camera-based visibility estimation: Incorporating multiple regions and unlabeled observations. Ecological Informatics, 2014; 23: 62–68.
Kumari A, Sahoo S K. Fast single image and video deweathering using look-up-table approach. AEU - International Journal of Electronics and Communications, 2015; 69(12): 1773–1782.
Ni W, Gao X, Wang Y. Single satellite image de-hazing via linear intensity transformation and local property analysis. Neurocomputing, 2016; 175: 25–39.
Hu Z, Liu Q, Zhou S, Huang M, Teng F. Image dehazing algorithm based on atmosphere scatters approximation model[C]// International Conference on Neural Information Processing. Springer-Verlag, 2012:159–168.
Ding M, Tong R. Efficient dark channel based image de-hazing using quadtrees. Science China Information Sciences, 2013; 56(9): 1–9.
Wang Y, Wu B. Improved single image de-hazing using dark channel prior. 2010 IEEE International Conference on Intelligent Computing and Intelligent Systems (ICIS), 2010.
Wang J B, He N, Zhang L L, K Lu. Single image dehazing with a physical model and dark channel prior. Neurocomputing, 2015; 149(PB): 718–728.
Hui H. Thin cloud-fog cover removed from remote sensing imagery based on stationary wavelet transformation. Atlantis Press, 2014.
Copyright (c)