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Deep learning architectures for underwater target recognition

机译:用于水下目标识别的深度学习架构

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Passive sonar target recognition is a challenging task due to the complex milieu of the ocean. Most of the state of the art target recognition systems depend on hand engineered feature extraction schemes in order to effectively represent the target signatures, based on expert knowledge. Due to the whimsical nature of the sources and medium, such feature engineering methods often fail to yield invariant features from the observations. In this paper, a deep unsupervised feature learning approach capable of capturing invariant features from the sensory signal stream through multi layered hierarchical abstraction has been adopted. These abstractions learned by the higher layers are mostly invariant and can be used as the discriminative features for the purpose of classification.
机译:由于海洋环境复杂,被动声纳目标识别是一项具有挑战性的任务。基于专家知识,大多数现有技术的目标识别系统都依赖于手工设计的特征提取方案,以便有效地表示目标签名。由于源和介质的异想天开的性质,此类特征工程方法通常无法从观测结果中产生不变的特征。本文采用了一种深度的无监督特征学习方法,该方法能够通过多层层次抽象从感知信号流中捕获不变特征。较高层学习到的这些抽象大部分是不变的,可以用作区分目的的分类特征。

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