首页> 外文会议>Conference on detection and remediation technologies for mines and minelike targets >Improvements in computer-aided detection/computer-aided classification (CAD/CAC) of bottom mines through post analysis of a diverse set of very shallow water (VSW) environmental test data
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Improvements in computer-aided detection/computer-aided classification (CAD/CAC) of bottom mines through post analysis of a diverse set of very shallow water (VSW) environmental test data

机译:通过柱分析通过多样性浅水(VSW)环境测试数据的底部分析,改善底部矿区的计算机辅助检测/计算机辅助分类(CAD / CAC)

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In 1999 Raytheon adapted its shallow-water Side-Looking Sonar (SLS) Computer Aided Detection/Computer Aided Classification (CAD/CAC) algorithm to process side-scan sonar data obtained with the Woods Hole Oceanographic Institute's Remote Environmental Monitoring Units (REMUS) autonomous underwater vehicle (AUV). To date, Raytheon has demonstrated the ability to effectively execute mine-hunting missions with the REMUS vehicle through the fusion of its CAD/CAC algorithm with several other CAD/CAC algorithms to achieve low false alarm rates while maintaining a high probability of correct detection/classification. Mine-hunting in the very shallow water (VSW) environment poses a host of difficulties including such issues as: a higher incidence of man made clutter, significant interference due to biological sources (such as kelp or silt), the scouring of mines into the bottom, interference from surface/bottom bounce, and image distortion due to vehicle motion during image generation. These issues coupled with highly variable bottom conditions and small bottom targets make reliable hunting in the VSW environment very difficult. In order to be operationally viable, the individual CAD/CAC algorithms must demonstrate robustness over these very different mine-hunting environments. A higher normalized false alarm rate per algorithm is considered acceptable based on the false alarm reduction achieved through multi-algorithm fusion. Raytheon's recent CAD/CAC algorithm enhancements demonstrate a significant improvement in overall CAD/CAC performance across a diverse set of environments, from the relatively benign Gulf of Mexico environment to the more challenging areas off the coast of southern California containing significant biological and bottom clutter. The improvements are attributed to incorporating an image normalizer into the algorithm's pre-processing stage in conjunction with several other modifications. The algorithm enhancements resulted in an 11% increase in overall correct classification probability with an accompanying 17% reduction in false alarm rate, when averaged over the multiple environments. The paper discusses the algorithm enhancements and presents the detailed performance results.
机译:1999年,雷神调整其浅水侧面看声纳(SLS)计算机辅助检测/计算机辅助分类(CAD / CAC)算法处理侧扫描声纳数据,用树林孔海洋学院的远程环境监测单位(雷姆斯)自主水下车辆(AUV)。迄今为止,Raytheon已经证明了能够通过融合其CAD / CAC算法与其他几个CAD / CAC算法,以实现低误报率,以实现低误报率,同时保持正确检测的高概率/分类。在非常浅水(VSW)环境中的矿山狩猎造成了一系列困难,包括以下问题:人类的发病率较高,由于生物来源(如海带或淤泥),矿井的冲洗液底部,从表面/底部反弹的干扰,以及由于车辆运动期间由于车辆运动引起的图像失真。这些问题与高度可变的底部条件和小底部目标相结合,在VSW环境中可以在VSW环境中进行可靠的狩猎。为了在操作上可行,各个CAD / CAC算法必须在这些非常不同的矿井狩猎环境中展示鲁棒性。基于通过多算法融合所实现的误报例减少,每算法的较高归一化误报率被认为是可接受的。 Raytheon最近的CAD / CAC算法增强功能表明,各种环境中的整体CAD / CAC性能的显着改善,从墨西哥环境中的相对良性的环境中,从南加州海岸的较为挑战性的地区,含有显着的生物和底部杂乱无章。改进归因于将图像标准化器结合到算法的预处理阶段结合几个其他修改。算法增强导致总体正确分类概率增加11%,随着多种环境的平均,伴随的误报率下降17%。本文讨论了算法增强功能,并提出了详细的性能结果。

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