Abstract
Motion segmentation is the most important part in many applications, such as surveillance, security, monitoring, recognition, etc. The presented research deals with short-term illumination variations in video streams. Illumination variations influence values of pixels and greatly impact the segmentation mask obtained as a part of a motion detection algorithm. In order to subjectively visualize the extent of variations, these must be emphasized. The chapter presents a wavelet energy model based algorithm which detects and emphasizes illumination variations.
Access this chapter
Tax calculation will be finalised at checkout
Purchases are for personal use only
References
Zhang, T., Tang, Y.Y., Fang, B., Shang, Z., Liu, X.: Face recognition under varying illumination using gradientfaces. IEEE Trans Imag Process 18, 2599–2606 (2009)
Choi, M., Kim, G., Choi, H.: Robust character region extraction against camera motion and illumination variation. Proceedings of the 7th WSEAS international conference on computational intelligence, Man-machine systems and cybernetics, pp. 161–164 (2008)
Porter, R., Fraser, A.M., Hush, D.: Wide-area motion imagery. IEEE Sig Process Mag 27, 56–65 (2010)
Vujović, I.: Suppressing illumination variations in motion detection by wavelet transform. Ph.D. Thesis, Faculty of Electrical Engineering, Mechanical Engineering and Naval Architecture, University of Split, Split (2011)
Wong, P.C., Bergeron, R.D.: Multiresolution multidimensional wavelet brushing. Proceedings of IEEE visualization, pp. 171–178 (1996)
Stauffer, C., Grimson, W.E.L.: Adaptive background mixture models for real-time tracking. Proceedings of IEEE computer society conference computer vision and pattern recognition, Ft. Collins, USA, vol. 2, pp. 246–252 June 1999
Theiler, J.: Quantitative comparison of quadratic covariance-based anomalous change detectors. Appl. Opt. 47, F12–F26 (2008)
Porter, R., Harvey, N., Theiler, J.: A change detection approach to moving object detection in low fame-rate video. Proceedings of SPIE, Orlando, USA, 73410S(8) (2009)
Rosin, P., Ioannidis, E.: Evaluation of global image thresholding for change detection. Pattern Recogn. Lett. 24, 2345–2356 (2003)
Christopher, H., Walnut, D.F.: Fundamental Papers in Wavelet Theory. Princeton University Press, London (2006)
Jansen, M., Oonincx, P.: Second Generation Wavelets and Applications. Springer-Verlag, London (2005)
Mallat, S.: A Wavelet Tour of Signal Processing. Academic Press, New York (2009)
Vujović, I., Šoda, J., Kuzmanić, I.: Cutting-edge mathematical tools in processing and analysis of signals in marine and navy. Trans Marit Sci 1, 35–46 (2012)
Tolba, M.F., Bahgat, S.F., Al-Berry, M.N.: Wavelet-enhanced detection of low contrast objects moving in environments with varying illumination. Int J Intell Coop Inf Syst 5, 395–412 (2005)
Tolba, MF., Bahgat, S.F., Al-Berry, M.N.: A fast and reliable memory-based frame-differencing technique for moving object detection. Proceedings 14th international conference on computer: theory and applications, Alexandria, Egypt (2004)
Matlab homepage. Available at: http://www.mathworks.com
Selesnick, I.W., Li, K.Y.: Programs for 3-D oriented wavelet transforms and examples. Available at: http://taco.poly.edu/WaveletSoftware (2003)
Führ, H., Demaret, L., Friedrich, F.: Beyond wavelets: new image representation paradigms. In: Barni, M. (ed.) Document and Image Compression. CRC Press, London (2006)
Melchior, P., Meneghetti, M., Bartelmann, M.: Reliable shapelet image analysis. Astron. Astrophys. 463, 1215–1225 (2007)
Pennec, E., Mallat, S.: Sparse geometric image representations with bandelets. IEEE Trans Imag Process 14, 423–438 (2005)
Wu, B., Nevatia, R.: Detection of multiple, partially occluded humans in a single image by bayesian combination of edgelet part detectors. 10th IEEE international conference on computer vision, Beijing, China, October 17–20, pp. 90–97 (2005)
Candés, E., Demanet, L., Donoho, D., Ying, L.: Fast discrete curvelet transforms. Multiscale Model Simul 5, 861–899 (2006)
Amer, A.: Memory-based spatio-temporal real-time object segmentation for video surveillance. Proceedings of the conference on real-time imaging VII, Santa Clara, January 22–23, vol. 5012, pp. 10–21 (2003)
Zhichao, L., Joo, E.M.: Face recognition under varying illumination. In: Er, M.J. (ed.) New Trends in Technologies: Control, Management, Computational Intelligence and Network Systems. InTech, Rijeka (2010)
Dorf, R.C.: The Electrical Engineering Handbook. CRC Press LLC, Boca Raton (2000)
Vujović, I., Kuzmanić, I., Beroš, S.M., Šoda, J.: Choosing wavelet pairs in suppression of illumination variations for port surveillance, Proceedings Electronics in Marine ELMAR 2011, Zadar, Croatia, September 14–16, pp. 75–78 (2011)
Author information
Authors and Affiliations
Corresponding author
Editor information
Editors and Affiliations
Rights and permissions
Copyright information
© 2013 Springer International Publishing Switzerland
About this chapter
Cite this chapter
Vujović, I., Kuzmanić, I., Šoda, J., Beroš, S.M. (2013). Visualization of Global Illumination Variations in Motion Segmentation. In: Öchsner, A., Altenbach, H. (eds) Experimental and Numerical Investigation of Advanced Materials and Structures. Advanced Structured Materials, vol 41. Springer, Cham. https://doi.org/10.1007/978-3-319-00506-5_4
Download citation
DOI: https://doi.org/10.1007/978-3-319-00506-5_4
Published:
Publisher Name: Springer, Cham
Print ISBN: 978-3-319-00505-8
Online ISBN: 978-3-319-00506-5
eBook Packages: Chemistry and Materials ScienceChemistry and Material Science (R0)