首页> 外文会议>Electrical and Computer Engineering, 2004. Canadian Conference on >Identifying distinguishing size and shape features of mine-like objects in sidescan sonar imagery
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Identifying distinguishing size and shape features of mine-like objects in sidescan sonar imagery

机译:在侧扫声纳图像中识别类雷物体的大小和形状特征

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The purpose of this work is to identify features that can successfully classify objects that appear in sidescan sonar imagery as belonging to one of 3 mine classes or a non-mines class. Naval mine hunters identify mines in the imagery primarily using the size and shape of signature bright and dark regions, referred to as the highlight and shadow respectively. A data set of real sidescan sonar imagery was provided by Defence Research and Development Canada. Many feature sets, some novel, were tested for their ability to discriminate between mines and non-mines, as well as between the different types of mines (cylinder, truncated cone, and sphere) and the non-mines. Classification was performed using a linear discriminant function. Ultimately, several good features representing certain size and shape qualities were identified. These include measures of object height, shadow elongation, shadow 2-rotational symmetry, and particular shadow shapes (using Fourier descriptors).
机译:这项工作的目的是确定可以成功地将侧扫声纳图像中出现的对象归类为3个地雷类之一或非地雷类之一的特征。海军猎雷者主要使用标志性明暗区域的大小和形状(分别称为亮光和暗光)来识别图像中的地雷。加拿大国防研究与发展局提供了真实的侧扫声纳图像数据集。测试了许多功能集(一些新颖的功能)以区分地雷和非地雷,以及区分不同类型的地雷(圆柱,圆锥台和球形)与非地雷的能力。使用线性判别函数进行分类。最终,确定了代表某些尺寸和形状质量的几个良好特征。这些包括对象高度,阴影延伸率,阴影2旋转对称性和特定阴影形状(使用傅立叶描述符)的度量。

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