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http://dx.doi.org/10.15207/JKCS.2020.11.11.075

A Study on the Crime Prevention Smart System Based on Big Data Processing  

Kim, Won (Division of IT Convergence, Woosong University)
Publication Information
Journal of the Korea Convergence Society / v.11, no.11, 2020 , pp. 75-80 More about this Journal
Abstract
Since the Fourth Industrial Revolution, important technologies such as big data analysis, robotics, Internet of Things, and the artificial intelligence have been used in various fields. Generally speaking it is understood that the big-data technology consists of gathering stage for enormous data, analyzing and processing stage and distributing stage. Until now crime records which is one of useful big-sized data are utilized to obtain investigation information after occurring crimes. If crime records are utilized to predict crimes it is believed that crime occurring frequency can be lowered by processing big-sized crime records in big-data framework. In this research the design is proposed that the smart system can provide the users of smart devices crime occurrence probability by processing crime records in big-data analysis. Specifically it is meant that the proposed system will guide safer routes by displaying crime occurrence probabilities on the digital map in a smart device. In the experiment result for a smart application dealing with small local area it is showed that its usefulness is quite good in crime prevention.
Keywords
Convergence; Big Data; Crime Prevention; Data Processing; Location based Approach;
Citations & Related Records
Times Cited By KSCI : 7  (Citation Analysis)
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