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Spatial-temporal analysis on bird habitat discovery in China

机译:中国鸟类栖息地发现的空间时间分析

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Exploring migration patterns through uncovering migratory birds' habitat information is very important in biology, which has scientific significance in animal habitat conservation and avian influenza control. In this paper, we convert the traditional biology problem into a computational study and use data mining techniques to analyze the spatial and temporal distribution of bird-watching data in China. First, we present an improved hierarchical clustering algorithm (IHDBSCAN) to identify the habitats/stopovers of migrant birds. Then, we use a kernel smoothing method to fit the temporal distribution of bird observation in each spatial cluster. A hierarchical cluster tree is generated where the leaf nodes indicate different bird habitats/stopovers. Finally, the results is visualized on the map of China. Experimental results show that the proposed algorithm can effectively find the spatial and temporal distribution of Anseriformes' habitats.
机译:通过揭示迁徙鸟类的栖息地信息探索迁移模式非常重要,在生物学中具有科学意义,对动物栖息地保护和禽流感控制具有科学意义。在本文中,我们将传统的生物学问题转换为计算研究和使用数据挖掘技术来分析中国观鸟数据的空间和时间分布。首先,我们提出了一种改进的分层聚类算法(IHDBSCAN),以识别移民鸟类的栖息地/止血。然后,我们使用内核平滑方法来符合每个空间簇中鸟观测的时间分布。生成分层群集树,其中叶节点表示不同的鸟类栖息地/垃圾件。最后,结果在中国的地图上可视化。实验结果表明,该算法可以有效地找到Anseriformes栖息地的空间和时间分布。

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