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EGO-CH: Dataset and fundamental tasks for visitors behavioral understanding using egocentric vision

机译:EGO-CH:使用Egocentric Vision的访客行为理解的数据集和基本任务

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Equipping visitors of a cultural site with a wearable device allows to easily collect information about their preferences which can be exploited to improve the fruition of cultural goods with augmented reality. Moreover, egocentric video can be processed using computer vision and machine learning to enable an automated analysis of visitors' behavior. The inferred information can be used both online to assist the visitor and offline to support the manager of the site. Despite the positive impact such technologies can have in cultural heritage, the topic is currently understudied due to the limited number of public datasets suitable to study the considered problems. To address this issue, in this paper we propose EGOcentric-Cultural Heritage (EGO-CH), the first dataset of egocentric videos for visitors' behavior understanding in cultural sites. The dataset has been collected in two cultural sites and includes more than 27hours of video acquired by 70 subjects, with labels for 26 environments and over 200 different Points of Interest. A large subset of the dataset, consisting of 60 videos, is associated with surveys filled out by real visitors. To encourage research on the topic, we propose 4 challenging tasks (room-based localization, point of interest/object recognition, object retrieval and survey prediction) useful to understand visitors' behavior and report baseline results on the dataset. (c) 2019 Elsevier B.V. All rights reserved.
机译:用可穿戴设备装配文化遗址的游客允许容易地收集有关他们偏好的信息,这可以利用,以改善具有增强现实的文化物品的成果。此外,可以使用计算机视觉和机器学习来处理自动整除视频,以实现访客行为的自动分析。推断信息都可以在线使用,以帮助访问者和脱机支持网站的经理。尽管这种技术可以在文化遗产中产生积极影响,但目前该主题是由于适合研究所考虑的问题的公共数据集数量有限。为了解决这个问题,在本文中,我们提出了Egentric-文化遗产(EGO-CH),这是在文化遗产中的游客行为理解的Egentric视频的第一个数据集。该数据集已在两个文化网站中收集,包括70个科目的27多个视频,具有26个环境的标签和200多个不同的兴趣点。由60个视频组成的数据集的大小子集与真实访客填写的调查相关联。为了鼓励对该主题的研究,我们提出了4个挑战性的任务(基于房间的本地化,兴趣点/对象识别,对象检索和调查预测),可用于了解访问者的行为,并在数据集上报告基线结果。 (c)2019 Elsevier B.v.保留所有权利。

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