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Automatic interpretation of sonar image sequences using temporal feature measures

机译:使用时间特征量度自动解释声纳图像序列

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摘要

This paper reports the development of a system for the automated interpretation of sector scan sonar data. It proposes the use of a new combination of feature measures derived from sequences of sonar scans to characterize the behaviour of targets' returns over time. Previous research used grey-scale and shape descriptors derived from single sonar scans. However, problems were experienced with targets whose return varied significantly over time (such as divers, UUV's, and ships' wakes). Hence a new set of temporal feature measures has been developed by combining existing one-dimensional temporal measures and two-dimensional object descriptors. These new features provide a quantitative description of the behaviour of a target's two-dimensional returns over a sequence of sonar scans. Experiments with a limited but real data set have shown that classification accuracy can be significantly improved by the use of these new features. The use of "static" feature measures (derived from a single scan) was observed to give classification errors of between 7% and 10% when they were applied to the data set. In contrast, the use of temporal measures reduced this error rate to 1% or 2% and in some cases reduced it to zero.
机译:本文报告了一种自动解释扇区扫描声纳数据的系统的开发。它建议使用从声纳扫描序列中得出的特征量度的新组合来表征目标随时间变化的返回行为。先前的研究使用了从单次声纳扫描得出的灰度和形状描述符。但是,目标的回报随时间变化很大(例如,潜水员,UUV和船只的尾波),因此会遇到问题。因此,通过组合现有的一维时间度量和二维对象描述符,开发了一组新的时间特征度量。这些新功能提供了一系列声纳扫描过程中目标二维返回行为的定量描述。使用有限但真实的数据集进行的实验表明,使用这些新功能可以显着提高分类准确性。当将“静态”特征量度(源自单次扫描)应用于数据集时,观察到的分类误差为7%至10%。相反,使用时间度量将错误率降低到1%或2%,在某些情况下将其降低到零。

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