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Automated Analysis Techniques for Oceanographic Imaging

机译:海洋影像自动化分析技术

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摘要

Since scientists began to study the ocean, they have had to develop new observational methods. Modern marine biologists and ecologists have increasingly used imaging systems to help address their most persistent and vexing questions. These techniques have allowed researchers to take samples at higher spatial or temporal frequency than ever before. While yielding marvelous new insight into difficult to observe phenomena, image-based sampling creates a new data problem: there is too much of it. Without techniques to classify and analyze oceanographic images, much of the data sits idle.;Two instruments developed in the Jaffe Laboratory for Underwater Imaging are em- blematic of this trend. The Sub Sea Holodeck (SSH) is an immersive virtual aquarium developed to study cephalopod camouflage in the laboratory. The Scripps Plankton Camera System (SPCS) is a pair of in situ microscopes built to observe undisturbed plankton populations over long periods of time. In this thesis, new techniques, grounded in current machine learning methodologies, are developed to speed the analysis of these information rich big data sets.;Data from the SSH are treated as textures and classified using texton dictionaries. In addition to being highly accurate, the texton-based method is entirely data driven---the metric for separating it is derived directly from the images. As a consequence, a new criterion for classifying cephalopods is proposed that explicitly treats samples that do not conform to the prescribed three class system.;Images from the SPCS and several other in situ plankton imaging systems are used to evaluate the performance of new deep learning methods. Several Convolutional Neural Networks (CNNs) are trained from the data and tested against each other. The results underscore the startling representational power of CNNs and suggest that neural methods outperform other approaches for annotating plankton images.;Finally, an automated classifier is deployed on SPCS data to explore the dynamics of a host-parasite relationship. A CNN is used to build a high-resolution time series tracking fluctuations in Oithona similis and the parasite Paradinium sp. The subsequent analysis identifies a possible time scale of the parasite's internal life stage and its effect on the overall O. similis population.
机译:自从科学家开始研究海洋以来,他们不得不开发新的观测方法。现代海洋生物学家和生态学家越来越多地使用成像系统来帮助解决他们最持久和最棘手的问题。这些技术使研究人员能够以前所未有的更高的空间或时间频率进行采样。尽管对难以观察到的现象有了奇妙的新见解,但基于图像的采样却产生了一个新的数据问题:问题太多了。没有分类和分析海洋影像的技术,许多数据就处于闲置状态。;在贾夫实验室水下成像中开发的两台仪器证明了这一趋势。 Sub Sea Holodeck(SSH)是一个沉浸式虚拟水族馆,旨在研究实验室中的头足类动物伪装。斯克里普斯浮游生物相机系统(SPCS)是一对原位显微镜,旨在长时间观察未受干扰的浮游生物种群。本文研究了基于当前机器学习方法的新技术,以加快对这些信息丰富的大数据集的分析速度。SSH中的数据被视为纹理,并使用texton字典进行分类。除了高度精确之外,基于texton的方法完全是数据驱动的-分离它的度量标准直接来自图像。因此,提出了一种分类头足类动物的新标准,该标准可明确处理不符合规定的三类系统的样本.SPCS和其他几种原位浮游生物成像系统的图像用于评估新型深度学习的性能方法。从数据中训练了几个卷积神经网络(CNN)并进行了相互测试。结果强调了CNN惊人的代表性,并表明神经方法的性能优于其他方法来注释浮游生物图像。最后,在SPCS数据上部署了自动分类器,以探索宿主-寄生虫关系的动态变化。 CNN用于建立高分辨率的时间序列,以追踪Oithona similis和寄生虫Paradinium sp。中的波动。随后的分析确定了寄生虫内部生命阶段的可能时间尺度及其对整个拟南芥种群的影响。

著录项

  • 作者

    Orenstein, Eric Coughlin.;

  • 作者单位

    University of California, San Diego.;

  • 授予单位 University of California, San Diego.;
  • 学科 Ocean engineering.;Computer science.;Biological oceanography.
  • 学位 Ph.D.
  • 年度 2018
  • 页码 125 p.
  • 总页数 125
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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