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首页> 外文期刊>IEEE Journal of Oceanic Engineering >A comparison of inter-frame feature measures for robust object classification in sector scan sonar image sequences
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A comparison of inter-frame feature measures for robust object classification in sector scan sonar image sequences

机译:扇区间扫描声纳图像序列中用于鲁棒物体分类的帧间特征量度比较

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摘要

This paper presents an investigation of the robustness of an inter-frame feature measure classifier for underwater sector scan sonar image sequences. In the initial stages the images are of either divers or remotely operated vehicles (ROV's). The inter-frame feature measures are derived from sequences of sonar scans to characterize the behavior of the objects over time. The classifier has been shown to produce error rates of 0%-2% using real nonnoisy images. The investigation looks at the robustness of the classifier with increased noise conditions and changes in the filtering of the images. It also identifies a set of features that are less susceptible to increased noise conditions and changes in the image filters. These features are the mean variance, and the variance of the rate of change in time of the intra-frame feature measures area, perimeter, compactness, maximum dimension and the first and second invariant moments of the objects. It is shown how the performance of the classifier can be improved. Success rates of up to 100% were obtained for a classifier trained under normal noise conditions, signal-to-noise ratio (SNR) around 9.5 dB, and a noisy test sequence of SNR 7.6 dB.
机译:本文提出了对水下扇区扫描声纳图像序列的帧间特征量度分类器的鲁棒性的研究。在初始阶段,图像是潜水员或遥控车(ROV)的图像。帧间特征量度来自声纳扫描序列,以表征对象随时间的行为。使用真实的无噪图像,该分类器已显示出0%-2%的错误率。这项研究着眼于分类器的鲁棒性,该分类器具有更高的噪声条件和图像滤波方面的变化。它还标识了一组不易受到噪声条件增加和图像滤波器变化影响的功能。这些特征是平均方差,而帧内特征的时间变化率的变化则测量对象的面积,周长,紧凑性,最大尺寸以及对象的第一和第二不变矩。显示了如何提高分类器的性能。在正常噪声条件,9.5 dB左右的信噪比(SNR)和SNR 7.6 dB的嘈杂测试序列下训练的分类器上,成功率高达100%。

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