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Detection and classification of marine mammal sounds using AlexNet with transfer learning

机译:使用alexnet与转移学习的海洋哺乳动物声音的检测和分类

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In this study, AlexNet with transfer learning was employed to automatically detect and classify the sounds of killer whales, long-finned pilot whales, and harp seals with widely overlapping living areas. Transfer learning was used to overcome the overfitting problem of deep network as the training samples was insufficient. A challenging dataset containing both target (the three marine mammal sounds) and non-target (ambient noise including ship noise, pulse interference, and man-made sounds, etc) sounds collected from different recording times, locations and devices was used to examine the performance of the proposed method, and the sounds used in the test dataset were completely independent of the training dataset. The overall accuracy of the trained detection and classification models reached 99.96% and 97.42% respectively. Importantly, each trained model took only 1.3 ms to detect or classify a single image. Furthermore, feature visualizations and strongest activations demonstrated that the proposed method learns the true differences between different marine mammal sounds rather than differences between different recording environments and devices. Therefore, all results show that the proposed method has excellent performance and great potential for practical application.
机译:在这项研究中,采用转移学习的亚历山口自动检测和分类虎鲸,长翅目的先导鲸和竖琴密封的声音,具有广泛的重叠生活区。随着训练样本不足,转移学习被用来克服深度网络的过度限制问题。包含从不同录制时间,位置和设备收集的目标(三个海洋哺乳动物声音)和非目标(包括船舶噪声,脉冲干扰和人造声音等)声音的具有挑战性的数据集。所提出的方法的性能,以及测试数据集中使用的声音完全独立于训练数据集。训练有素的检测和分类模型的整体准确性分别达到99.96%和97.42%。重要的是,每个训练的模型只需要1.3 ms来检测或分类单个图像。此外,特征可视化和最强的激活表明,所提出的方法了解不同海洋哺乳动物声音之间的真实差异而不是不同记录环境和设备之间的差异。因此,所有结果表明,该方法具有优异的性能和实际应用的巨大潜力。

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    《Oceanographic Literature Review》 |2021年第5期|1076-1076|共1页
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