AN AUTOMATIC SEMANTIC MAP GENERATION METHOD USING TRAJECTORY DATA release_nwxqbihquja3laj7iaj5zsursi

by Y. Miao, X. Tang, Z. Wang

Published in The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences by Copernicus GmbH.

2020   Volume XLIII-B4-2020, p63-67

Abstract

Abstract. It's easily to obtain the geometric information of terrain features in a timely manner using advanced surveying and mapping methods, but it is impossible to obtain their semantic information with low latency due to the rapid development of cities. The popularity of GPS-enabled devices and technologies provide us a large number of personal location information. Moreover, it is possible to extract the personal or group behavior pattern due to the regularity of human behavior. Those conditions make it possible to extract and identify human behavior patterns from their trajectory data. In this paper, we present an automatic semantic map generation method that extract semantic patterns and take advantage of them to tagging spatial objects in an unknown region based on known semantic patterns. We study the regularity of trajectory data and build the semantic pattern based on the regularity of human behavior. Most importantly, we use known semantic patterns to identify the semantics of the stay points in the unknown region, and use this method to realize the semantic recognition of the stay points. Results of the experiments show the effectiveness of our proposed method.
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