Quality Assessment of Global Ocean Island Datasets

Yijun Chen, Shenxin Zhao, Lihua Zhang, Qi Zhou
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Abstract

Ocean Island data are essential to the conservation and management of islands and coastal ecosystems, and have also been adopted by the United Nations as a sustainable development goal (SDG 14). Currently, two categories of island datasets, i.e., global shoreline vector (GSV) and OpenStreetMap (OSM), are freely available on a global scale. However, few studies have focused on accessing and comparing the data quality of these two datasets, which is the main purpose of our study. Specifically, these two datasets were accessed using four 100 × 100 (km2) study areas, in terms of three aspects of measures, i.e., accuracy (including overall accuracy (OA), precision, recall and F1), completeness (including area completeness and count completeness) and shape complexity. The results showed that: (1) Both the two datasets perform well in terms of the OA (98% or above) and F1 (0.9 or above); the OSM dataset performs better in terms of precision, but the GSV dataset performs better in terms of recall. (2) The area completeness is almost 100%, but the count completeness is much higher than 100%, indicating the total areas of the two datasets are almost the same, but there are many more islands in the OSM dataset. (3) In most cases, the fractal dimension of the OSM dataset is relatively larger than the GSV dataset in terms of the shape complexity, indicating that the OSM dataset has more detail in terms of the island boundary or coastline. We concluded that both of the datasets (GSV and OSM) are effective for island mapping, but the OSM dataset can identify more small islands and has more detail.
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全球海洋岛屿数据集的质量评估
海洋岛屿数据对于岛屿和沿海生态系统的保护和管理至关重要,也已被联合国采纳为可持续发展目标(可持续发展目标14)。目前,全球范围内免费提供两类岛屿数据集,即全球海岸线矢量(GSV)和开放街道地图(OSM)。然而,很少有研究关注这两个数据集的数据质量的获取和比较,这是我们研究的主要目的。具体而言,这两个数据集使用4个100 × 100 (km2)的研究区域,从三个方面的措施,即准确性(包括总体准确性(OA)、精度、召回率和F1)、完整性(包括面积完整性和计数完整性)和形状复杂性。结果表明:(1)两个数据集在OA(98%以上)和F1(0.9以上)方面均表现良好;OSM数据集在精度方面表现更好,但GSV数据集在召回率方面表现更好。(2)区域完备性几乎为100%,但计数完备性远高于100%,说明两个数据集的总面积几乎相同,但OSM数据集的岛屿数量更多。(3)在大多数情况下,OSM数据集的分形维数相对大于GSV数据集的形状复杂度,表明OSM数据集在岛屿边界或海岸线方面具有更详细的信息。研究结果表明,GSV和OSM数据集都可以有效地用于岛屿制图,但OSM数据集可以识别更多的小岛屿,并且具有更多的细节。
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