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Robust classification of variable-length sonar sequences

机译:可变长度声纳序列的鲁棒分类

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Two types of artificial neural networks are introduced for the robust classification of spatio-temporal sequences. The first network is the Adaptive Spatio-Temporal Recognizer (ASTER), which adaptively estimates the confidence that a (variable length) signal of a known class is present by continuously monitoring a sequence of feature vectors. If the confidence for any class exceeds a threshold value at some moment, the signal is considered to be detected and classified. The nonlinear behavior of ASTER provides more robust performance than the related dynamic time warping algorithm. ASTER is compared with a more common approach wherein a self-organizing feature map is first used to map a sequence of extracted feature vectors onto a lower dimensional trajectory, which is then identified using a variant of the feedforward time delay neural network. The performance of these two networks is compared using artificial sonograms as well as feature vectors strings obtained from short-duration oceanic signals.
机译:引入了两种类型的人工神经网络,用于稳健的时空序列分类。所述第一网络是自适应时空识别器(ASTER),该自适应估计置信度已知类的(可变长度)信号存在通过持续监控特征向量的序列。如果对任何类的置信处于某个时刻超过阈值,则认为信号被检测和分类。 ASTER的非线性行为提供比相关动态时间翘曲算法更强大的性能。将ASter与更常见的方法进行比较,其中自组织特征映射首先用于将提取的特征向量序列映射到较低尺寸轨迹上,然后使用前馈时间延迟神经网络的变型识别。使用人工超声图对比这两个网络的性能以及从短持续期海洋信号获得的特征向量。

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