Evaluating Visitors’ experience in museum: comparing Artificial Intelligence and Multi-partitioned analysis

Digital Applications in Archaeology and Cultural Heritage(2024)

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摘要
Analysing visitors’ behaviour in a museum or in a cultural site is a crucial element to manage spaces, artworks arrangement and to improve the visit experience. This paper presents the preliminary results of the ARTEMISIA project, exploiting Artificial Intelligence (AI) techniques to study, design and develop a methodology to interpret visitors’ behaviour within a museum context, namely the Museum of Rome in Palazzo Braschi (Rome, Italy). The aim is to combine literature on users’ experience (UX) analysis with experimental data coming from the visitor anonymous tracking from motion sensors (users’ stand-still positions, viewpoint direction, movements), merging the approaches of different research domains. Through the use of agglomerative hierarchical clustering algorithms, four categories of visitors were identified, then associated to user profiles emerged by UX evaluations. Such analysis may lead to new forms of visitors profiling and to the development of a new generation of customised applications in public and private contexts. Identifying and predicting users’ patterns with respect to room arrangement may also be useful to suggest improvement in the museum spaces and exhibitions (new indications, updated storytelling or changes in thematic configuration).© 2023 Elsevier Ltd. All rights reserved.
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关键词
Museum Studies,User Experience Evaluation,Artificial Intelligence,Museum Visit Trajectories,Visitors’ segmentation
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