Chinese Optics Letters, Volume. 10, Issue 1, 011001(2012)

Unsupervised regions of interest extraction for color image compression

Xiaoguang Shao, Kun Gao, Lili Lv, and Guoqiang Ni

A novel unsupervised approach for regions of interest (ROI) extraction that combines the modified visual attention model and clustering analysis method is proposed. Then the non-uniform color image compression algorithm is followed to compress ROI and other regions with different compression ratios through the JPEG image compression algorithm. The reconstruction algorithm of the compressed image is similar to that of the JPEG algorithm. Experimental results show that the proposed method has better performance in terms of compression ratio and fidelity when comparing with other traditional approaches.

Tools

Get Citation

Copy Citation Text

Xiaoguang Shao, Kun Gao, Lili Lv, Guoqiang Ni. Unsupervised regions of interest extraction for color image compression[J]. Chinese Optics Letters, 2012, 10(1): 011001

Download Citation

EndNote(RIS)BibTexPlain Text
Save article for my favorites
Paper Information

Category:

Received: Apr. 12, 2011

Accepted: Jun. 3, 2011

Published Online: Aug. 8, 2011

The Author Email:

DOI:10.3788/col201210.011001

Topics