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Visual Features Extraction and Types Classification of Seabed Sediments

机译:海底沉积物的视觉特征提取和类型分类

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The purpose of this research is to define and extract the visual features of the seabed sediments to improve the autonomous ability of a underwater vehicle while implementing exploring missions. A scheme of seabed image classification is proposed to identify three types of seabed sediments. The texture features of images are stable and robust visual features in underwater environment comparing with general visual features, and which are described by using gray-level co-occurrence matrix and fractal dimension. Subsequently, for purpose of evaluation, a supervised non-parametric statistical learning technique, support vector machines (SVMs), is applied to verify the availability of extracted texture features on seabed sediments classification. The presented results of seabed type recognition justify the proposed features extracted method valid to seabed type recognition.
机译:这项研究的目的是定义和提取海底沉积物的视觉特征,以提高水下航行器在执行探索任务时的自主能力。提出了一种海底图像分类方案,以识别三种类型的海底沉积物。与一般视觉特征相比,图像的纹理特征在水下环境中具有稳定而鲁棒的视觉特征,并通过使用灰度共现矩阵和分形维数来描述。随后,出于评估的目的,采用了一种有监督的非参数统计学习技术,即支持向量机(SVM),以验证提取的纹理特征在海底沉积物分类中的可用性。提出的海床类型识别结果证明了所提出的特征提取方法对海床类型识别是有效的。

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