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用于海底观测站水下动物检测和分类的视频图像增强和机器学习管道。

Video Image Enhancement and Machine Learning Pipeline for Underwater Animal Detection and Classification at Cabled Observatories.

机构信息

DS Labs, R+D+I unit of Deusto Sistemas S.A., 01015 Vitoria-Gasteiz, Spain.

Department of System Engineering and Automation Control, Faculty of Engineering of Vitoria-Gasteiz, University of the Basque Country (UPV/EHU), Nieves Cano, 12, 01006 Vitoria-Gasteiz, Spain.

出版信息

Sensors (Basel). 2020 Jan 28;20(3):726. doi: 10.3390/s20030726.

DOI:10.3390/s20030726
PMID:32012976
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC7038495/
Abstract

An understanding of marine ecosystems and their biodiversity is relevant to sustainable use of the goods and services they offer. Since marine areas host complex ecosystems, it is important to develop spatially widespread monitoring networks capable of providing large amounts of multiparametric information, encompassing both biotic and abiotic variables, and describing the ecological dynamics of the observed species. In this context, imaging devices are valuable tools that complement other biological and oceanographic monitoring devices. Nevertheless, large amounts of images or movies cannot all be manually processed, and autonomous routines for recognizing the relevant content, classification, and tagging are urgently needed. In this work, we propose a pipeline for the analysis of visual data that integrates video/image annotation tools for defining, training, and validation of datasets with video/image enhancement and machine and deep learning approaches. Such a pipeline is required to achieve good performance in the recognition and classification tasks of mobile and sessile megafauna, in order to obtain integrated information on spatial distribution and temporal dynamics. A prototype implementation of the analysis pipeline is provided in the context of deep-sea videos taken by one of the fixed cameras at the LoVe Ocean Observatory network of Lofoten Islands (Norway) at 260 m depth, in the Barents Sea, which has shown good classification results on an independent test dataset with an accuracy value of 76.18% and an area under the curve (AUC) value of 87.59%.

摘要

了解海洋生态系统及其生物多样性与可持续利用它们提供的商品和服务有关。由于海洋区域拥有复杂的生态系统,因此开发能够提供大量多参数信息的空间广泛监测网络非常重要,这些信息涵盖生物和非生物变量,并描述所观察物种的生态动态。在这种情况下,成像设备是补充其他生物和海洋监测设备的有价值工具。然而,大量的图像或电影不能全部手动处理,因此迫切需要用于识别相关内容、分类和标记的自主例程。在这项工作中,我们提出了一种用于分析视觉数据的管道,该管道集成了视频/图像注释工具,用于定义、训练和验证具有视频/图像增强功能的数据集,并结合机器和深度学习方法。为了获得关于空间分布和时间动态的综合信息,需要这样的管道才能在移动和固着大型动物的识别和分类任务中取得良好的性能。在挪威海罗弗敦群岛(挪威)的 LoVe 海洋观测站网络的一个固定摄像机拍摄的深海视频的背景下,提供了分析管道的原型实现,在独立测试数据集上取得了很好的分类结果,准确率为 76.18%,曲线下面积 (AUC) 值为 87.59%。

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