Laser Active Image-Denoising Based on Principal Component Analysis with Local Pixel Grouping

Article Preview

Abstract:

Denoising is an important issue for laser active image. This paper attempted to process laser active image in the low-dimensional sub-space. We adopted the principal component analysis with local pixel grouping (LPG-PCA) denoising method proposed by Zhang [1], and compared it with the conventional denoising method for laser active image, such as wavelet filtering, wavelet soft threshold filtering and median filtering. Experimental results show that the image denoised by LPG-PCA has higher BIQI value than other images, most of the speckle noise can be reduced and the detail structure information is well preserved. The low-dimensional sub-space idea is a new direction for laser active image denoising.

You might also be interested in these eBooks

Info:

Periodical:

Pages:

753-756

Citation:

Online since:

June 2014

Export:

Price:

[1] L. Zhang, W.S. Dong, Z. David and G.G. Shi: PR, Vol. 43 (2010), pp.1531-1549.

Google Scholar

[2] Z.Q. Li, Q. Li and Q, Wang: CJL, Vol. 31 (2004) No. 9, pp.1081-1085. (in Chinese).

Google Scholar

[3] Y.F. Xu, J. Xu and F.L. Zhao: HPLPB, Vol. 21 (2010) No. 12, pp.1786-1790. (in Chinese).

Google Scholar

[4] Y.C. Li, Y.C. Fan and Y.H. Du: LI, Vol. 41 (2011) No. 9, pp.1036-1040. (in Chinese).

Google Scholar

[5] Y.C. Fan, Y.C. Li and H.L. Zhang: LI, Vol. 41 (2011) No. 11, pp.1188-1192. (in Chinese).

Google Scholar

[6] A.K. Moorthy and A.C. Bovik: SPL, Vol. 75 (2010) No. 5, pp.513-516.

Google Scholar