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INVERSION OF SIDE SCAN SONAR MOTION AND POSTURE IN SEABED GEOMORPHOLOGY

Abstract

Side scan sonar measurement platform, affected by underwater environment and its own motion precision, inevitably has posture and motion disturbance, which greatly affects accuracy of geomorphic image formation. It is difficult to sensitively and accurately capture these underwater disturbances by relying on auxiliary navigation devices. In this paper, we propose a method to invert motion and posture information of the measurement platform by using the matching relation between the strip images. The inversion algorithm is the key link in the image mosaic frame of side scan sonar, and the acquired motion posture information can effectively improve seabed topography and plotting accuracy and stability. In this paper, we first analyze influence of platform motion and posture on side scan sonar mapping, and establish the correlation model between motion, posture information and strip image matching information. Then, based on the model, a reverse neural network is established. Based on input, output of neural network, design of and test data set, a motion posture inversion mechanism based on strip image matching information is established. Accuracy and validity of the algorithm are verified by the experimental results.

Keywords:

side scan sonar, image matching, image fusion, neutral network, motion inversion

Details

Issue
Vol. 24 No. S2(94) (2017)
Section
Latest Articles
Published
13-09-2017
DOI:
https://doi.org/10.1515/pomr-2017-0068
Licencja:
Creative Commons License

This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.

Open Access License

This journal provides immediate open access to its content under the Creative Commons BY 4.0 license. Authors who publish with this journal retain all copyrights and agree to the terms of the CC BY 4.0 license.

 

Authors

  • Weiliang Tao

    The School of Electronic Information, Wuhan University
  • Yan Liu

    State Key Laboratory of Power Grid Environmental Protection, China Electric Power Research Institute
  • Wenbin Hu

    The School of Electronic Information, Wuhan University

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