首页> 外文会议> >Sonar image registration through symbolic matching: a fuzzy local transform approach using genetic algorithms
【24h】

Sonar image registration through symbolic matching: a fuzzy local transform approach using genetic algorithms

机译:通过符号匹配进行声纳图像配准:使用遗传算法的模糊局部变换方法

获取原文

摘要

Depending on sonar characteristics (resolution, ...) and tow fish configuration (location, heading, altitude, ...), sonar images present different properties. An algorithm which registers directly all these images would be very complex and hardly evolutive. In order to overcome these problems, the authors propose a two-step registrating system: its first stage is acquisition-dependent and extracts information through processed tailored for each sonar type. Then, this symbolic knowledge feeds a generic system whose goal is to perform the matching task between current information and previously recorded data. Examples of such data range from coarse detected objects (low resolution sensor) to finely delimited homogeneous sea-bed regions (texture analysis relying on higher resolution sonar outputs). Thus, multiple symbolic information can be extracted from the same sea-bed region when various tracks overlap. Nevertheless, precision on tow-fish navigational data recorded with sonar images, do not allow one to directly match common information. Thus, the authors implement such a matching mechanism using genetic algorithms with variable-length chromosomes coding a field of transformations the size of which is not a priori known. This new flexibility allows the registration of different tracks covering a same sea-bed region with multiple distortions.
机译:根据声纳特征(分辨率,...)和拖鱼配置(位置,航向,高度,...),声纳图像具有不同的属性。直接注册所有这些图像的算法将非常复杂且难以改进。为了克服这些问题,作者提出了一个两步注册系统:其第一阶段是获取相关的,并通过为每种声纳类型量身定制的处理过程来提取信息。然后,这种象征性知识为通用系统提供了一个目标,该系统的目标是执行当前信息和先前记录的数据之间的匹配任务。此类数据的示例范围从粗略检测到的物体(低分辨率传感器)到精细界定的均匀海底区域(纹理分析依赖于高分辨率声纳输出)。因此,当各种轨迹重叠时,可以从同一海床区域提取多个符号信息。然而,用声纳图像记录的拖鱼导航数据的精确度不允许人们直接匹配公共信息。因此,作者使用具有可变长度染色体的遗传算法来实现这种匹配机制,该可变长度染色体编码先验未知的转化区域。这种新的灵活性允许配准覆盖同一海底区域的具有多个变形的不同航迹。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号