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Combining pixel and object based image analysis of ultra-high resolution multibeam bathymetry and backscatter for habitat mapping in shallow marine waters

机译:组合基于像素和基于对象的超高分辨率多阵线沐浴浴和反向散射在浅海水中栖息地施工

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摘要

Habitat mapping data are increasingly being recognised for their importance in underpinning marine spatial planning. The ability to collect ultra-high resolution (cm) multibeam echosounder (MBES) data in shallow waters has facilitated understanding of the fine-scale distribution of benthic habitats in these areas that are often prone to human disturbance. Developing quantitative and objective approaches to integrate MBES data with ground observations for predictive modelling is essential for ensuring repeatability and providing confidence measures for habitat mapping products. Whilst supervised classification approaches are becoming more common, users are often faced with a decision whether to implement a pixel based (PB) or an object based (OB) image analysis approach, with often limited understanding of the potential influence of that decision on final map products and relative importance of data inputs to patterns observed. In this study, we apply an ensemble learning approach capable of integrating PB and OB Image Analysis from ultra-high resolution MBES bathymetry and backscatter data for mapping benthic habitats in Refuge Cove, a temperate coastal embayment in south-east Australia. We demonstrate the relative importance of PB and OB seafloor derivatives for the five broad benthic habitats that dominate the site. We found that OB and PB approaches performed well with differences in classification accuracy but not discernible statistically. However, a model incorporating elements of both approaches proved to be significantly more accurate than OB or PB methods alone and demonstrate the benefits of using MBES bathymetry and backscatter combined for class discrimination.
机译:人居映射数据越来越多地认识到他们在支撑海洋空间规划方面的重要性。收集超高分辨率(CM)的多阵容(CM)的多阵线回声(MBES)数据在浅水区中的能力促进了了解这些领域的底栖栖息地的细尺分布,这些区域通常容易出现人类干扰。开发将MBES数据与地面观测集成的定量和客观方法,以确保栖息地绘制产品的可重复性和提供信心措施,这是必不可少的。虽然监督分类方法变得越来越普遍,但用户通常面临决定是否基于基于像素(PB)或基于物体的(OB)图像分析方法,通常有限地了解最终地图上该决定的潜在影响所观察到数据输入的产品和数据输入的相对重要性。在这项研究中,我们应用了能够将PB和OB图像分析集成的集合学习方法,从超高分辨率MBES浴室和反向散射数据进行了避难所在避难所在避难所的浮动栖息地,是澳大利亚东南部的温带沿海跃迁。我们展示了Pb和ob海底衍生物对统治该网站的五个广泛底栖栖息地的相对重要性。我们发现OB和PB方法良好,分类准确性差异,但统计上不可辨别。然而,通过单独的ob或pb方法证明了两种方法的元素的模型被证明是更准确的,并证明使用MBES沐浴浴和反向散射组合进行类别歧视的益处。

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