Hot Spot Analysis of Tourist Attractions Based on Stay Point Spatial Clustering

Y. Liao
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引用次数: 4

Abstract

The wide application of various integrated location-based services (LBS social) and tourism application (app) has generated a large amount of trajectory space data. The trajectory data are used to identify popular tourist attractions with high density of tourists, and they are of great significance to smart service and emergency management of scenic spots. A hot spot analysis method is proposed, based on spatial clustering of trajectory stop points. The DBSCAN algorithm is studied with fast clustering speed, noise processing and clustering of arbitrary shapes in space. The shortage of parameters is manually selected, and an improved method is proposed to adaptively determine parameters based on statistical distribution characteristics of data. DBSCAN clustering analysis and contrast experiments are carried out for three different datasets of artificial synthetic twodimensional dataset, four-dimensional Iris real dataset and scenic track retention point. The experiment results show that the method can automatically generate reasonable clustering division, and it is superior to traditional algorithms such as DBSCAN and k-means. Finally, based on the spatial clustering results of the trajectory stay points, the Getis-Ord Gi* hotspot analysis and mapping are conducted in ArcGIS software. The hot spots of different tourist attractions are classified according to the analysis results, and the distribution of popular scenic spots is determined with the actual heat of the scenic spots.
基于停留点空间聚类的旅游景点热点分析
各种基于位置的综合服务(LBS social)和旅游应用(app)的广泛应用产生了大量的轨迹空间数据。利用轨迹数据识别游客密度较大的热门旅游景点,对景区的智慧服务和应急管理具有重要意义。提出了一种基于轨迹停止点空间聚类的热点分析方法。对DBSCAN算法进行了快速聚类、噪声处理和空间任意形状聚类的研究。提出了一种基于数据统计分布特征自适应确定参数的改进方法。对人工合成二维数据集、四维虹膜真实数据集和景区轨迹保留点三种不同的数据集进行了DBSCAN聚类分析和对比实验。实验结果表明,该方法能够自动生成合理的聚类划分,优于传统的DBSCAN和k-means算法。最后,基于轨迹停留点空间聚类结果,在ArcGIS软件中进行Getis-Ord Gi*热点分析与制图。根据分析结果对不同旅游景区的热点进行分类,并结合景区的实际热度确定热门景点的分布。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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