基于深度学习的不同时期旅游景点人群识别

Xiaoyan Fang
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引用次数: 0

摘要

客流量预测的准确性在景区管理中起着至关重要的作用。传统的景区客流预测方法严重依赖于静态的历史数据,往往忽略了影响客流的重要因素。这个过程通常很耗时。然而,随着深度技术的出现,现在可以使用实时数据收集和分析来设计数据源的时间和空间表示。设计了一种结合动态时间弯曲距离指标和时间数据聚类分析的时间特征识别方法的基于深度学习的旅游流识别模型。该方法可以利用位置大数据分析交通时间类型,识别交通空间分布特征,分析结果有助于景区交通和设施管理。
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Deep learning-based crowd recognition for tourist attractions in different periods
The accuracy of tourists traffic prediction plays a critical role in scenic area management. Traditional methods of forecasting tourist attraction traffic rely heavily on static historical data, often ignoring important factors that affect the flow of tourists. This process is usually time-consuming. However, with the emergence of deep technology, it is now possible to use real-time data collection and analysis to design a temporal and spatial representation of data sources. And a deep learning-based tourist flow recognition model combined with dynamic time-bending distance indicators and a temporal feature recognition method with temporal data clustering analysis is designed. The method can use location big data to analyze traffic temporal types and identify traffic spatial distribution features, and the analysis results can help traffic and facility management in scenic areas.
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