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Wavelet moment invariants are constructed for object recognition based on the global feature and local feature of target, which are brought for the simple background of the underwater objects, complex structure, similar form etc. These invariant features realize the multi-dimension feature extraction of local topology and invariant transform. Considering translation and scale invariant characteristics were ignored by conventional wavelet moments, some improvements were done in this paper. The cubic B-spline wavelets which are optimally localized in space-frequency and close to the forms of Li's (or Zernike's) polynomial moments were applied for calculating the wavelet moments. To testify superiority of the wavelet moments mentioned in this paper, generalized regression neural network (GRNN) was used to calculate the recognition rates based on wavelet invariant moments and conventional invariant moments respectively. Wavelet moments obtained 100% recognition rate for every object and the conventional moments obtained less classification rate. The result shows that wavelet moment has the ability to identify many types of objects and is suitable for laser image recognition. 相似文献
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A method of underwater simultaneous localization and mapping (SLAM) based on on-board looking forward sonar is proposed. The
real-time data flow is obtained to form the underwater acoustic images and these images are pre-processed and positions of
objects are extracted for SLAM. Extended Kalman filter (EKF) is selected as the kernel approach to enable the underwater vehicle
to construct a feature map, and the EKF can locate the underwater vehicle through the map. In order to improve the association
efficiency, a novel association method based on ant colony algorithm is introduced. Results obtained on simulation data and
real acoustic vision data in tank are displayed and discussed. The proposed method maintains better association efficiency
and reduces navigation error, and is effective and feasible. 相似文献
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