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http://dx.doi.org/10.36498/kbigdt.2020.5.1.29

Study on Extracting Filming Location Information in Movies Using OCR for Developing Customized Travel Content  

Park, Eunbi (아주대학교 경영대학 e-비즈니스학과)
Shin, Yubin (아주대학교 경영대학 e-비즈니스학과)
Kang, Juyoung (아주대학교 경영대학 e-비즈니스학과)
Publication Information
The Journal of Bigdata / v.5, no.1, 2020 , pp. 29-39 More about this Journal
Abstract
Purpose The atmosphere of respect for individual tastes that have spread throughout society has changed the consumption trend. As a result, the travel industry is also seeing customized travel as a new trend that reflects consumers' personal tastes. In particular, there is a growing interest in 'film-induced tourism', one of the areas of travel industry. We hope to satisfy the individual's motivation for traveling while watching movies with customized travel proposals, which we expect to be a catalyst for the continued development of the 'film-induced tourism industry'. Design/methodology/approach In this study, we implemented a methodology through 'OCR' of extracting and suggesting film location information that viewers want to visit. First, we extract a scene from a movie selected by a user by using 'OpenCV', a real-time image processing library. In addition, we detected the location of characters in the scene image by using 'EAST model', a deep learning-based text area detection model. The detected images are preprocessed by using 'OpenCV built-in function' to increase recognition accuracy. Finally, after converting characters in images into recognizable text using 'Tesseract', an optical character recognition engine, the 'Google Map API' returns actual location information. Significance This research is significant in that it provides personalized tourism content using fourth industrial technology, in addition to existing film tourism. This could be used in the development of film-induced tourism packages with travel agencies in the future. It also implies the possibility of being used for inflow from abroad as well as to abroad.
Keywords
Customized Travel Content; Movie-Induced Tourism; Filming Location; OCR; Image Preprocessing; OpenCV;
Citations & Related Records
Times Cited By KSCI : 3  (Citation Analysis)
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