How to perceive tourism destination image? A visual content analysis based on inbound tourists’ photos

IF 8.9 2区 管理学 Q1 HOSPITALITY, LEISURE, SPORT & TOURISM Journal of Destination Marketing & Management Pub Date : 2024-07-10 DOI:10.1016/j.jdmm.2024.100923
Xiaoyu Wang , Naixia Mou , Shaodong Zhu , Tengfei Yang , Xiuchun Zhang , Yameng Zhang
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Abstract

Photos are an important tool for understanding the minds of travelers and characterizing the tourism destination image, and they play a unique role in the construction of tourism images. The wide application of deep learning techniques has brought new opportunities for the visual content analysis of images. This paper proposes a framework for comprehensively analyzing the image of tourist destinations and for targeted tourism planning. Firstly, this paper utilizes deep learning techniques to perceive images from three perspectives: image scene, visual aesthetics and emotional experience, based on photos of inbound tourists in Beijing on the Flickr website. Secondly, spatial visualization analysis of the perceived image is carried out with the help of tourism resource distribution to provide suggestions for tourism planning. The results show that: (1) Beijing's inbound tourism cognitive images can be categorized as food, culture, people, architecture, recreation, natural scenery, city life, animals and infrastructure. (2) The categories of architecture, culture and natural scenery have a higher quality of visual aesthetics and more positive emotional arousal. (3) Spatially, Beijing's inbound tourism image shows the structural characteristics of multi-core aggregation. The findings provide relevant theoretical and practical guidance for destination planning and management.

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如何感知旅游目的地形象?基于入境游客照片的视觉内容分析
照片是了解旅游者心理、表征旅游目的地形象的重要工具,在旅游形象构建中发挥着独特的作用。深度学习技术的广泛应用为图像的视觉内容分析带来了新的机遇。本文提出了一个全面分析旅游目的地形象并进行有针对性的旅游规划的框架。首先,本文基于 Flickr 网站上的北京入境游客照片,利用深度学习技术从图像场景、视觉美学和情感体验三个角度对图像进行感知。其次,结合旅游资源分布对感知图像进行空间可视化分析,为旅游规划提供建议。结果表明(1) 北京入境旅游认知形象可分为美食、文化、人文、建筑、休闲娱乐、自然风光、城市生活、动物和基础设施。(2)建筑、文化和自然风光类的视觉美感质量较高,更容易引起积极的情感共鸣。(3)从空间上看,北京入境旅游形象呈现多核聚集的结构特征。研究结果为目的地规划和管理提供了相关的理论和实践指导。
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来源期刊
CiteScore
18.60
自引率
3.60%
发文量
46
审稿时长
43 days
期刊介绍: The Journal of Destination Marketing & Management (JDMM) is an international journal that focuses on the study of tourist destinations, specifically their marketing and management. It aims to provide a critical understanding of all aspects of destination marketing and management, considering their unique contexts in terms of policy, planning, economics, geography, and history. The journal seeks to develop a strong theoretical foundation in this field by incorporating knowledge from various disciplinary approaches. Additionally, JDMM aims to promote critical thinking and innovation in destination marketing and management, expand the boundaries of knowledge, and serve as a platform for international idea exchange.
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