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Development of Coral-Coverage Estimation Method Using Deep Learning and Sea Trial: at Kujuku-Shima Islands

机译:深度学习和海试的珊瑚覆盖率估算方法的开发:在九十九岛岛

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Comprehensive and effective survey methods of coral distribution are indispensable for environmental conservation in the sea. Observation methods by divers, autonomous underwater vehicles (AUVs), and aerial imagery have been investigated for decades. However, effective methods in turbid water have not been developed sufficiently. In this paper, we propose a practical coral-coverage estimation method by combining an effective survey system (SSS: Speedy Sea Scanner) and a deep-learning based estimation method. We tested the performance of the proposed method in Kujuku-Shima islands, Nagasaki, Japan. Experimental results showed that corals can be distinguished with accuracy of about 80% in places with relatively high transparency, and the error of coverage estimation is 10% or less.
机译:全面有效的珊瑚分布调查方法对于海洋环境保护是必不可少的。潜水员,自动水下航行器(AUV)和航空影像的观测方法已经研究了数十年。然而,在混浊水中的有效方法尚未充分开发。在本文中,我们结合了有效的调查系统(SSS:Speedy Sea Scanner)和基于深度学习的估计方法,提出了一种实用的珊瑚覆盖率估计方法。我们在日本长崎的Kujuku-Shima岛上测试了该方法的性能。实验结果表明,在透明度相对较高的地方,珊瑚的识别精度约为80%,覆盖率估计误差在10%以下。

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