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Target classification in SAS imagery using orthogonal basis selection

机译:使用正交基础选择的SAS图像中的目标分类

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This work proposes an approach that finds efficient representations for training and classification of different mine like objects (MLOs) in underwater imagery, e.g. side scan sonar and synthetic aperture sonar (SAS). The focus is on the design and selection of a compact, optimal and a non linear snbspace, a dictionary, based on the gradient and curvature models in 2D images. Here, the traditional sparse approximation formulation is decoupled and modified by an additional discriminating objective function and a corresponding selection strategy is proposed. During training, using a set of labelled sonar images, a single optimised discriminatory dictionary is learnt which can then be used to represent MLOs. During classification, this dictionary together with optimised coefficient vectors is used to label scene entities. Evaluation of our approach has resulted in classification accuracies of 95% and 94% on realistic synthetic side-scan images and real CMRE SAS imagery, respectively.
机译:这项工作提出了一种方法,该方法可以找到有效的表示形式,用于训练和分类水下图像中不同的类雷物体(MLO),例如侧面扫描声纳和合成孔径声纳(SAS)。重点是基于2D图像中的梯度和曲率模型,设计和选择紧凑,最佳和非线性snbspace,字典。在此,通过附加的判别目标函数对传统的稀疏近似公式进行解耦和修改,并提出了相应的选择策略。在训练过程中,使用一组标记的声纳图像,可以学习单个优化的区分词典,然后将其用于表示MLO。在分类期间,该字典与优化的系数向量一起用于标记场景实体。对我们的方法进行评估,得出的真实合成侧扫描图像和真实CMRE SAS图像的分类准确率分别为95%和94%。

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