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Automated Texture-Based Recognition of Corals in Natural Scene Images

机译:自然场景图像中珊瑚的基于纹理的自动识别

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摘要

Current coral reef health monitoring efforts rely on biodiversity data. Although cutting-edge imaging technology enables reliable and automatic collection of such data, simple RGB digital photography in combination with manual image annotation remains a popular solution. Unlike other acquisition methods, close range visible light imaging yields detailed species and surface coverage data, and requires cheaper equipment. Moreover, images acquired in the last few decades are limited to mere RGB photographs or analog VHS video, and contain important data for long term analysis. Unfortunately, manual expert labeling has become problematic due to the high volume of images and the lack of human resources available. Consequently, coral reef biodiversity data currently available is based mostly on small sample analysis. Previous automatic benthic image annotation systems have yielded unsatisfactory results compared to human performance for the same task. This is partly due to the high diversity of complex textures found in these images. We hypothesize that these complex textures require different features to be properly characterize. Motivated by the need for an improved automated benthic image annotation system, this work proposes a new approach based on a combination of multiple state-of-the art texture recognition methods. Firstly, methods to correct and enhance images will be investigated. Secondly, various state-of-the-art texture features will be used to overcome the texture diversity challenge: many statistical features, local binary patterns, textons, vector-quantized Scale-Invariant Feature Transform (SIFT) using the Improved Fisher Vector (IFV) method, Deep Convolutional Activation Feature (DeCAF), amongst others. Thirdly, a multi-classifier fusion method is proposed to efficiently aggregate the information from these multiple texture representations using a score-level fusion. Fourthly, rejection will be applied to further enhance accuracy. The results on the AIMS dataset (Australian Institute of Marine Science) and MLC2008 (Moorea Labeled Corals 2008) containing respectively 75 825 and 131 260 coral texture patches show that the proposed multi-classifier fusion method outperforms any other single method for the task of benthic image labeling.
机译:当前的珊瑚礁健康监测工作依赖于生物多样性数据。尽管尖端的成像技术可以可靠且自动地收集此类数据,但简单的RGB数字摄影结合手动图像注释仍然是一种流行的解决方案。与其他采集方法不同,近距离可见光成像可产生详细的物种和表面覆盖数据,并且需要更便宜的设备。此外,在最近几十年中获取的图像仅限于RGB照片或模拟VHS视频,并且包含用于长期分析的重要数据。不幸的是,由于图像量大和缺乏可用的人力资源,手动专家标记已成为问题。因此,目前可获得的珊瑚礁生物多样性数据主要基于小样本分析。与相同任务的人工表现相比,以前的自动底栖图像注释系统产生的结果不令人满意。部分原因是在这些图像中发现了复杂纹理的高度多样性。我们假设这些复杂的纹理需要不同的特征才能正确表征。出于对改进的自动底栖图像注释系统的需求,这项工作提出了一种基于多种最新纹理识别方法的组合的新方法。首先,将研究校正和增强图像的方法。其次,将使用各种最新的纹理特征来克服纹理多样性挑战:许多统计特征,局部二进制模式,纹理,使用改进的Fisher向量(IFV)进行矢量量化的尺度不变特征变换(SIFT) )方法,深度卷积激活特征(DeCAF)等。第三,提出了一种多分类器融合方法,以使用得分级融合有效地聚合来自这些多个纹理表示的信息。第四,拒绝将被应用以进一步提高准确性。在AIMS数据集(澳大利亚海洋科学研究所)和MLC2008(Moorea标记的珊瑚2008)上分别包含75 825和131 260个珊瑚纹理斑块的结果表明,所提出的多分类器融合方法优于底栖生物的任何其他单一方法。图像标签。

著录项

  • 作者

    Blanchet, Jean-Nicola.;

  • 作者单位

    Ecole de Technologie Superieure (Canada).;

  • 授予单位 Ecole de Technologie Superieure (Canada).;
  • 学科 Artificial intelligence.;Robotics.;Engineering.
  • 学位 M.Eng.
  • 年度 2016
  • 页码 132 p.
  • 总页数 132
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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