SEARCH WITHIN CONTENT
Citation Information : International Journal of Advanced Network, Monitoring and Controls. Volume 2, Issue 3, Pages 190-193, DOI: https://doi.org/10.1109/iccnea.2017.62
License : (CC BY-NC-ND 4.0)
Published Online: 11-April-2018
Key point detection is still a challenging issue in pattern recognition. With the recent developments on complex network theory, pattern recognition techniques based on graphs have improved considerably. Key point detection can be approached by community identification in directed complex network because image is related with network model. This paper presents a complex network approach for key point detection in video monitoring image, which is both accurate and fast. We evaluate our method for square and subway station video monitoring images. Results show that our algorithm can outperform other traditional method both in accuracy and processing times.
R. Criado, M. Romance, et al., “Interest point detection in images using complex network analysis,” Journal of Computational and Applied Mathematics, vol. 236, Dec. 2012, pp. 2975-2980.
Z. X. Wu, X. Lu, et al., “Image edge detection based on local dimension: A complex networks approach,” Physica a-Statistical Mechanics and Its Applications, vol. 440, 2015, pp. 9-18.
K. Jieqi, L. Shan, et al. “A complex network based feature extraction for image retrieval,” IEEE Press, 2014.
J. Tang, Y. Chen, et al., “Image Modeling and Feature Extraction Method Based on Complex Network,” Computer Engineering, vol. 39, 2013, pp. 243-247.
Y. Chen, J. Tang, et al., “Image representation and recognition based on directed complex network model,” Advances in Intelligent Systems and Computing, vol. 212, 2013, pp. 985-993.
Q. Li, J. Ye, et al., Interest point detection using imbalance oriented selection, Pattern Recognition, vol. 41, 2008, pp. 672-688.
A. R. Backes, D. Casanova, et al., “Texture analysis and classification: A complex network-based approach,” Information Sciences, vol. 219, 2013, pp. 168-180.
M. E. J. Newman, “Communities, modules and large-scale structure in networks,” Nature Physics, vol. 8, 2012, pp. 25-31.
J. d. A. S. Wesley Nunes Gonçalves, Odemir Martinez Bruno, “A Rotation Invariant Face Recognition Method Based on Complex Network.” In Proceedings of the 15th Iberoamerican Congress on Pattern Recognition, 2010: 426-433.
A. R. Backes and O. M. Bruno, “Shape classification using complex network and Multi-scale Fractal Dimension,” Pattern Recognition Letters, vol. 31, 2010, pp. 44-51.
R. Criado, M. Romance, et al., Interest point detection in images using complex network analysis, Journal of Computational and Applied Mathematics, vol. 236, 2012, pp. 2975-2980.
R. Criado, M. Romance, et al., A post-processing method for interest point location in images by using weighted line-graph complex networks, International Journal of Bifurcation and Chaos in Applied Sciences and Engineering, vol. 22, 2012, pp. 1250163.
W. d. Nooy, A. Mrvar, et al., “Exploratory social network analysis with Pajek.” New York: Cambridge University Press, 2011.
M.E.J.Newmen, “Networks: An Introduction.” New York: Oxford University Press, 2010.
O. Shoval and U. Alon, SnapShot: Network Motifs, Cell, vol. 143, 2010, pp.326-U158.