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Passive Shallow Water Automated Target Recognition using Deep Convolutional Bi directional Long Short Term Memory

机译:无源浅水自动化目标识别使用深卷积的双向长期内记忆

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The extremely challenging nature of passive acoustic surveillance makes it a key area of research in Naval Non-Co-operative Target Recognition especially in Anti-Submarine Warfare systems. In shallow waters, the complex acoustics due to the highly varying ambient background noise as well as the multi-modal propagation in the surface-bottom bounded channel makes surveillance even difficult. In this work, an ensemble of Convolutional Neural Networks and Bidirectional Long Short Term Memory stages employing soft attention is used to effectively capture the spectro-temporal dynamics of the target signature. In order to alleviate the overall computational cost associated with the optimal model search in the extensive hyperparameter space, a recursive model elimination scheme, making frugal use of the available resources, is also proposed. Experimental analysis on acoustic target records, collected from the shallows of Arabian Sea, has yielded encouraging results in terms of model accuracy, precision and recall.
机译:被动声监控的极具挑战性质使其成为海军非合作目标识别的关键研究,尤其是抗潜艇战系统。在浅水区中,由于高度变化的环境背景噪声,以及表面底部有界信道中的多模态传播导致的复杂声学使监视甚至困难。在这项工作中,使用了采用软关注的卷积神经网络和双向长短短期内存级的集合来有效地捕获目标签名的光谱时间动态。为了减轻与广泛的超级普通空间中的最佳模型搜索相关的整体计算成本,还提出了一种递归模型消除方案,使得节俭使用可用资源。从阿拉伯海浅滩收集的声学目标记录的实验分析,在模型精度,精度和召回方面产生了令人鼓舞的结果。

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