2009 IEEE International Conference on
Systems, Man, and Cybernetics |
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Abstract
This paper presents a new automated approach for mine detection and classification (MDC) problem based on change detection techniques using sidescan sonar images. Adopting change detection techniques benefits this approach to recognize mine targets without training data or prior assumption required in traditional detection methods. In this approach, post-classification comparison is designed to detect the changes and the statistical information of pixel distribution is employed for change decision analysis. Specifically, because of the special characteristics of shadows in sonar images, shape and coarseness features are taken into account and play an important role in this method. This approach successfully applied to two sets of bi-temporal sidescan sonar images and obtained the results presented in this paper. Those results prove the applicability of this approach for mine recognition.