Open Access Open Access  Restricted Access Subscription Access

Image Processing and Reconstructing Using Principal Components Analysis

Md Masud Rana, Mobarakol Islam

Abstract


Principal components analysis (PCA) is a process of identifying image sequences in an effective way to find differences and similarities of information. Generally, it is very hard to find information from the high dimensional messages, where the graphical representation is not available. In this regard, the PCA is an important statistical procedure for analyzing data and find the reduce number of desired sequences. Essentially, the correlated sequences are transformed into a set of uncorrelated ones which are arranged by reducing variability. The PCA can reduce the computational complexity after reduction dimensions. This paper, we use an original image of dimension 408x350. By applying PCA, we reduced the original dimension to 408x57. Finally, we are remonstrated the original image by using selected features vectors.


Full Text:

PDF

References


Rein-Lien Hsu, “Face detection and modeling for recognition,” PhD thesis, Department of Computer Science & Engineering, Michigan State University, USA, 2002.

Tatepamulwar, C. B., et al. "Technique of face recognition based on PCA with eigen-face approach," Computing, Comm. and Signal Processing, Springer, 2019, 907-918.

David J. Beymer,’’Pose-invariant face recognition using real & virtual views,’’ PhD thesis, MIT, USA, 1996.

Zhu, Wenzhong, et al. "The review of prospect of remote sensing image processing," Recent Patents on Computer Science 10.1 (2017): 53-61.

Mudrova, M., and Aleš Procházka. "Principal component analysis in image processing." Proceedings of the MATLAB Technical Computing Conference, Prague, 2005.

Henry A.Rowley ,’’Neural network-based face detection’’ PhD thesis, Carnegie Mellon University, Pittsburgh, May 1999.

Dandpat, Swarup Kumar, and Sukadev Meher. "Performance improvement for face recognition using PCA and two-dimensional PCA," International Conference Computer Communication and Informatics, 2013.

Ying-Li Tian & Takeo Kanade,’’ Recognizing action units for facial expression analysis,’’ Carnegie Mellon University, Pittsburgh, USA, 1999.

Howard Demuth, Mark Beale, “Neural network toolbox users guide for use with MATLAB”, The MathWorks, Inc.1998.

John Daugman, ‘’Face and gesture recognition: overview’’ IEEE PAMI, vol.19, no.7, July 1997.

M. Islam, M. M. Rana and M. M. Rahaman, ”Application of principal components analysis (PCA) for image processing,” Proc. of the International Conference on Electrical Computer and Telecommunication Engineering, December 2012.

Desale, Rajenda Pandit, and Sarita V. Verma. "Study and analysis of PCA, DCT & DWT based image fusion techniques," International Conference on Signal Processing Image Processing & Pattern Recognition 2013.

Liu, Dan, Da-Wen Sun, and Xin-An Zeng. "Recent advances in wavelength selection techniques for hyperspectral image processing in the food industry," Food and Bioprocess Technology 7.2 (2014): 307-323.

Kumar, Gaurav, and Pradeep Kumar Bhatia. "A detailed review of feature extraction in image processing systems," Fourth International Conference on Advanced Computing & Communication Technologies, 2014.

Krishn, Abhinav, Vikrant Bhateja, and Akanksha Sahu. "Medical image fusion using combination of PCA and wavelet analysis," International Conference on Advances in Computing, Communications and Informatics, 2014.

Bouwmans, Thierry, and El Hadi Zahzah. "Robust PCA via principal component pursuit: A review for a comparative evaluation in video surveillance," Computer Vision and Image Understanding, 122 (2014): 22-34.

Tsai, Jinn-Tsong, Ping-Yi Chou, and Jyh-Horng Chou. "Performance comparisons between PCA-EA-LBG and PCA-LBG-EA approaches in VQ codebook generation for image compression," International Journal of Electronics 102.11 (2015): 1831-1851.

Zhu, Wenzhong, et al. "The Review of Prospect of Remote Sensing Image Processing," Recent Patents on Computer Science, 10.1 (2017): 53-61.

Kanaujia, Mayank, and Geetika Srivastava. "ECG signal decomposition using PCA and ICA." National Conference on Recent Advances in Electronics & Computer Engineering, 2015.

A. M. Numan-Al-Mobin, M. Islam, M. Rihab. Rana, M. M. Rana, K. R. Dhar, D.T. Islam, M. Rezwan and M. Hossain, “Backpropagation with vector chaotic learning rate,” International Journal of Advanced Computer Science and Applications, USA, pp. 88-93, Vol. 2, No. 4, 2011.

M. M. Rana and N. Halim, “Motion capture systems using optimal signal processing algorithm: A-state-of-the-art literature”, Accepted notification on 28/10/2018, Universal Journal of Communication and Network, Horizon Research Publishing, vol. 6. no.1, 2018.

M. M. Rana, N. Halim and M.M, Rahaman, “Process and measurement noise covariance estimation approach for motion capture systems”, IEEE Proc. of the 3rd International Conference on Inventive Computation Technologies, 15-16 Nov. 2018.


Refbacks

  • There are currently no refbacks.