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Automatic content-based analysis of georeferenced image data: Detection of Beggiatoa mats in seafloor video mosaics from the Halkon Mosby Mud Volcano

机译:自动基于内容的地理参考图像数据分析:从Halkon Mosby Mud火山中检测海底视频马赛克中的Beggiatoa垫

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The combination of new underwater technology as remotely operating vehicles (ROVs), high-resolution video imagery, and software to compute georeferenced mosaics of the seafloor provides new opportunities for marine geological or biological studies and applications in offshore industry. Even during single surveys by ROVs or towed systems large amounts of images are compiled. While these underwater techniques are now well-engineered, there is still a lack of methods for the automatic analysis of the acquired image data. During ROV dives more than 4200 georeferenced video mosaics were compiled for the Hakon Mosby Mud Volcano (HMMV). Mud volcanoes as HMMV are considered as significant source locations for methane characterised by unique chemoautotrophic communities as Beggiatoa mats. For the detection and quantification of the spatial distribution of Beggiatoa mats an automated image analysis technique was developed, which applies watershed transformation and relaxation based labelling of pre-segmented regions. Comparison of the data derived by visual inspection of 2840 video images with the automated image analysis revealed similarities with a precision better than 90%. We consider this as a step towards a time-efficient and accurate analysis of seafloor images for computation of geochemical budgets and identification of habitats at the seafloor. (c) 2006 Elsevier Ltd. All rights reserved.
机译:新的水下技术(如遥控船),高分辨率视频图像以及用于计算海底地理参考镶嵌图的软件的结合为海洋地质或生物学研究及在海上工业中的应用提供了新的机会。即使在ROV或拖曳系统的单次勘测期间,也可以编辑大量图像。尽管现在已经对这些水下技术进行了精心设计,但是仍然缺少用于自动分析采集的图像数据的方法。在ROV潜水期间,为Hakon Mosby泥火山(HMMV)编写了4200多个地理参考视频马赛克。泥火山作为HMMV被认为是甲烷的重要来源,其特征在于独特的化肥生物群落(如Beggiatoa垫)。为了检测和量化贝吉托垫的空间分布,开发了一种自动图像分析技术,该技术应用了分水岭变换和基于松弛的预分段区域标记。通过视觉检查2840个视频图像与自动图像分析得出的数据比较显示出相似性,其精度优于90%。我们认为这是朝着高效,准确分析海底图像迈出的一步,以计算地球化学预算和识别海底栖息地。 (c)2006 Elsevier Ltd.保留所有权利。

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