水听器大数据的深度学习

C. McQuay, F. Sattar, P. Driessen
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引用次数: 7

摘要

本文提出了一种有效的深度学习框架,用于从水听器大数据中长期监测声学事件。大型噪声ONC (Ocean Networks Canada)数据可能包含罕见的声学事件,可以利用深度卷积神经网络自动识别。在识别不同种类的海洋哺乳动物叫声的深度学习领域,很少有研究报道,然而,这对许多应用(如海洋导航)至关重要。在该方案中,采用深度学习特征集,并由支持向量机(SVM)分类器进行处理。所提出的方法使用28685分钟的数据进行了测试,这些数据跨越了一年中5573个鲸鱼呼叫/声学事件,并使用了人工操作员的注释。实验结果表明,基于深度特征学习的识别方案的平均识别准确率分别为98.69%(两类)和94.48%(多类),优于基于mfcc的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep learning for hydrophone big data
This paper presents an efficient deep learning framework for long-term monitoring of acoustic events from hydrophone big data. The large-scale noisy ONC (Ocean Networks Canada) data may contain rare acoustic events, which can be automatically recognized by utilizing a deep convolutional neural network. Few works have been reported in the area of deep learning for the recognition of different kinds of marine mammal calls which however is crucial for many applications such as marine navigation. In this proposed scheme, deep learning feature sets are adopted and processed by a support vector machione (SVM) classifier. The proposed method is tested with 28685 minutes of data, spanning a single year with 5573 whale calls/acoustic events, and using a human operator's annotations. The experimental results show that the average accuracy rate of recognition using deep feature learning are 98.69% (two-class) and 94.48% (multi-class), respectively, for the proposed recognition scheme, which outperforms the MFCC-based method.
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