Journal of Computers, Vol 7, No 7 (2012), 1786-1795, Jul 2012
doi:10.4304/jcp.7.7.1786-1795

Optimization of Turbulence Image Chromatic Data based on Surface Construction and RANSAC Estimation

Zhongwei Liang, Bangyan Ye, Xiaochu Liu

Abstract


For the purpose of meeting the requirement for image chromatic information storage, data processing and transmission in turbulence precise detection, this paper presents a new data optimization method of turbulence image chromatic data based on energy optimization surface construction and multi-order Random Sample Consensus (RANSAC) estimation. Though extracting turbulence image’s chromatic data in color-space, we compute image pixel’s normal vector, multi-order derivative vector and partial derivative vector, thus an energy optimization surface of chromatic data can be structured; subsequently, by expanding the multi-order RANSAC estimation, the multi-order RANSAC illustration of the layered chromatic vector surface can be realized, which contributes to the chromatic data optimization of turbulence image in different dimensional RANSAC estimation levels. Optimization experiment and performance comparison prove that an effective and reliable optimization results of turbulence image chromatic data can be obtained, an efficient method for studying the chromatic data and vector surface of turbulence image in different dimensional estimation level is also presented


Keywords


Turbulence image; Energy optimization surface; Multi-order Random Sample Consensus Estimation (RANSAC); Optimization of chromatic data

References


 

[1] HAN Meng, ZHONG Guangjun. “A Compression Algorithm for 3D Mesh to Use in Network”. Computer Technology and Development, Vol. 17, No. 12, pp. 8-11, 2007.

[2] Liu Jun Wang Qifu Chen Liping. “Compression of B- spline Based on Local Coordinate Second- order Prediction”. China Mechanical Engineering, Vol.19 No.3, pp.304-307, 2008.
http://dx.doi.org/10.3901/JME.2008.11.304

[3] Min Shi, Shengli Xie. “A prediction based vector quantization method for image coding”. Journal of South China University of Technology: Natural Science Edition, Vol.34 No.1, pp.18-23, 2006.

[4] Chun-lin Song, Rui Feng, Fu-qiang Liu. “A novel fractal wavelet image compression approach”. Journal of China University of Mining & Technology: English edition, Vol. 17, No.3, pp.121-125, 2007.

[5] Zhang Mingli, Zhang Sanyuan, Ye Xiuzi. “Multi-layered Geometry Image Representation of Point Cloud Surfaces”. Journal of Computer- aided Design and Computer Graphics, Vol. 16, No.12, pp.1662-1667, 2009.

[6] Liang Xiuxia, Zhang Caiming, Liu Yi. “A Topology Complexity Based Method to Approximate Isosurface with Trilinear Interpolated Triangular Patch”. Journal of Computer Research and Development, Vol. 43, No.3, pp. 828-535, 2006.

[7] I. Brilakis, Content Based Integration of Construction Site Images in AEC/FM Model Based Systems, Ph.D. Dissertation, Civil and Environmental Engineering, University of Illinois, Urbana-Champaign, IL, 365 pages, 2005.

[8] S. Lee, L. Chang, P. Chen, “Automated recognition of surface defects using digital color image processing”, Automation in Construction. Vol.15, No.4, pp.540–549, 2006.
http://dx.doi.org/10.1016/j.autcon.2005.08.001

[9] J. Neto, D. Arditi, “Using colors to detect structural components in digital pictures”, Computer Aided Civil and Infrastructure Engineering. Vol. 17, No.5, pp.61–76, 2002.
http://dx.doi.org/10.1111/1467-8667.00253

[10] S. Sadek, A. Al Hamadi, B. Michaelis, U. Sayed, “A new method for image classification based on multi-level neural networks”, World Academy of Science, Engineering and Technology, Vol. 57, No.1, pp.139–142, 2009.

[11] Yang Chun-ling, Kuang Kai-zhi, Chen Guan-hao. “Gradient-based structural similarity for image quality assessment”. Journal of South China University of Technology: Natural Science Edition, Vol. 34, No.9, pp.22-25, 2008.

[12] Liang Zhongwei, Zhang Chunliang, Ye Bangyan. “Turbulence image Noise Reverse Determination Based on Three-dimensional Information Energy Optimization Modeling and BP Network”. Mechanical Science and Technology for Aerospace Engineering, Vol. 29, No.4, pp. 428-434, 2010.

[13] ZHU Hong, Digital image processing. Beijing: Press of Science, 2005 pp. 246 - 267.

[14] ZHENG Nanning. Computer vision and pattern recognition. Beijing: Press of National Defense Industry, 1998 pp.136-157.

[15] JIA Yunde. Machine vision. Beijing: Press of Science, 2003, pp. 75-84.


Full Text: PDF


Journal of Computers (JCP, ISSN 1796-203X)

Copyright @ 2006-2013 by ACADEMY PUBLISHER – All rights reserved.