Application of the artificial intelligence for automatic detection of shipping noise in shallow-water

IF 0.2 Q4 ACOUSTICS
Sunhyo Kim, Seom-kyu Jung, D. Kang, Mira Kim, Sungho Cho
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引用次数: 0

Abstract

The study on the temporal and spatial monitoring of passing vessels is important in terms of protection and management the marine ecosystem in the coastal area. In this paper, we propose the automatic detection technique of passing vessel by utilizing an artificial intelligence technology and broadband striation patterns which are characteristic of broadband noise radiated by passing vessel. Acoustic measurements to collect underwater noise spectrum images and ship navigation information were conducted in the southern region of Jeju Island in South Korea for 12 days (2016.07.15-07.26). And the convolution neural network model is optimized through learning and validation processes based on the collected images. The automatic detection performance of passing vessel is evaluated by precision (0.936), recall (0.830), average precision (0.824), and accuracy (0.949). In conclusion, the possibility of the automatic detection technique of passing vessel is confirmed by using an artificial intelligence technology, and a future study is proposed from the results of this study.
人工智能在浅水船舶噪声自动检测中的应用
研究过往船只的时空监测对保护和管理沿海地区的海洋生态系统具有重要意义。本文利用人工智能技术,利用船舶辐射的宽带噪声特征,提出了船舶通过的自动检测技术。在韩国济州岛南部地区进行为期12天(2016.07.15-07.26)的声学测量,收集水下噪声频谱图像和船舶导航信息。并基于采集到的图像,通过学习和验证过程对卷积神经网络模型进行优化。通过精密度(0.936)、召回率(0.830)、平均精密度(0.824)和准确度(0.949)对通过船舶的自动检测性能进行评价。综上所述,通过人工智能技术确认了船舶通过自动检测技术的可能性,并根据研究结果提出了未来的研究方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
0.60
自引率
50.00%
发文量
1
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