Classifying Tourists’ Photos and Exploring Tourism Destination Image Using a Deep Learning Model

IF 2.6 4区 管理学 Q2 HOSPITALITY, LEISURE, SPORT & TOURISM Journal of Quality Assurance in Hospitality & Tourism Pub Date : 2022-02-10 DOI:10.1080/1528008X.2021.1995567
Nahye Cho, Youngok Kang, J. Yoon, Soyeon Park, Jiyeon Kim
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引用次数: 9

Abstract

ABSTRACT As social network service usage is rapidly surging in our daily life, social network service data plays a crucial role in identifying region of attractions and analyzing tourism destination image. In recent years, the computer vision technology is just beginning to be applied in the tourism field through the transfer learning of a deep learning model. However, the pre-trained models have limitations of properly classifying the photos with the unique landscape or specific elements of the tourism destination. With the purpose of going beyond these limitations, we generated a tourists’ photo classification reflecting regional characteristics and developed a deep learning model to classify photos according to this classification. Through the analysis of 168,216 Flickr photos, we analyzed the tourism destination image of Seoul. Key findings are that (1) tourists prefer to enjoy local food, to visit authentic traditional palaces, and to see inherent cityscape which can be uniquely enjoyed in Seoul, (2) tourist attractive factors differ by region of attractions, (3) tourist preferences differ by continent. This study has novelty in that it develops a tourist’s photo classification suitable for regional characteristics and analyzes tourism destination image by classifying photos using an artificial intelligence technology.
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利用深度学习模型对游客照片进行分类并探索旅游目的地形象
摘要随着社交网络服务在我们日常生活中的使用迅速激增,社交网络服务数据在识别景点区域和分析旅游目的地形象方面发挥着至关重要的作用。近年来,通过深度学习模型的迁移学习,计算机视觉技术才刚刚开始在旅游领域应用。然而,预先训练的模型在根据旅游目的地的独特景观或特定元素对照片进行适当分类方面存在局限性。为了超越这些限制,我们生成了一个反映地区特征的游客照片分类,并开发了一个深度学习模型来根据这种分类对照片进行分类。通过对168216张Flickr照片的分析,我们分析了首尔的旅游目的地形象。主要发现是:(1)游客更喜欢享受当地美食,参观正宗的传统宫殿,并欣赏首尔独特的城市景观;(2)旅游吸引力因素因景点地区而异;(3)游客偏好因大陆而异。本研究的新颖之处在于,它开发了一种适合区域特征的游客照片分类,并通过使用人工智能技术对照片进行分类来分析旅游目的地图像。
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来源期刊
Journal of Quality Assurance in Hospitality & Tourism
Journal of Quality Assurance in Hospitality & Tourism HOSPITALITY, LEISURE, SPORT & TOURISM-
CiteScore
7.00
自引率
18.20%
发文量
75
期刊介绍: The Journal of Quality Assurance in Hospitality & Tourism serves as a medium to share and disseminate new research findings, theoretical development and superior practices in hospitality and tourism. The journal aims to publish cutting-edge, empirically and theoretically sound research articles on quality planning, development, management, marketing, evaluation, and adjustments within the field. Readers of the journal stay up-to-date on the latest theory development and research findings, ways to improve business practices, successful hospitality strategies, maintenance of profit requirements, and increasing market share in this complex and growing field. Comprised of conceptual and methodological research papers, research notes, case studies, and review books and conferences the Journal of Quality Assurance in Hospitality & Tourism offers readers examples of real world practices and experiences that involve: -Organizational development and improvement -Operational and efficiency issues -Quality policy and strategy development and implementation -Quality function deployment -Quality experiences in hospitality industry -Service quality improvement and customer satisfaction -Managerial issues, such as employee empowerment & benefits, quality costs, & returns on investment -The role and participation of private and public sectors, including residents -International, national, and regional tourism; tourism destination sites; arid systems of tourism
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