IEICE Trans. Inf. Syst. | 2019

Side Scan Sonar Image Super Resolution via Region-Selective Sparse Coding

 
 
 
 

Abstract


Side scan sonar using low frequency can quickly search a wide range, but the images acquired are of low quality. The image super resolution (SR) method can mitigate this problem. The SR method typically uses sparse coding, but accurately estimating sparse coefficients incurs substantial computational costs. To reduce processing time, we propose a region-selective sparse coding based SR system that emphasizes object regions. In particular, the region that contains interesting objects is detected for side scan sonar based underwater images so that the subsequent sparse coding based SR process can be selectively applied. Effectiveness of the proposed method is verified by the reduced processing time required for image reconstruction yet preserving the same level of visual quality as conventional methods. key words: side scan sonar, super resolution, sparse coding, object detection

Volume 102-D
Pages 210-213
DOI 10.1587/TRANSINF.2018EDL8170
Language English
Journal IEICE Trans. Inf. Syst.

Full Text