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User-Centered Predictive Model for Improving Cultural Heritage Augmented Reality Applications: An HMM-Based Approach for Eye-Tracking Data

机译:以用户为中心的改善文化遗产增强现实应用的预测模型:基于HMM的眼动追踪方法

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Today, museum visits are perceived as an opportunity for individuals to explore and make up their own minds. The increasing technical capabilities of Augmented Reality (AR) technology have raised audience expectations, advancing the use of mobile AR in cultural heritage (CH) settings. Hence, there is the need to define a criteria, based on users’ preference, able to drive developers and insiders toward a more conscious development of AR-based applications. Starting from previous research (performed to define a protocol for understanding the visual behaviour of subjects looking at paintings), this paper introduces a truly predictive model of the museum visitor’s visual behaviour, measured by an eye tracker. A Hidden Markov Model (HMM) approach is presented, able to predict users’ attention in front of a painting. Furthermore, this research compares users’ behaviour between adults and children, expanding the results to different kind of users, thus providing a reliable approach to eye trajectories. Tests have been conducted defining areas of interest (AOI) and observing the most visited ones, attempting the prediction of subsequent transitions between AOIs. The results demonstrate the effectiveness and suitability of our approach, with performance evaluation values that exceed 90%.
机译:如今,参观博物馆已被视为个人探索和下定决心的机会。增强现实(AR)技术的不断增强的技术能力提高了观众的期望,促进了在文化遗产(CH)设置中使用移动AR。因此,有必要根据用户的喜好定义一个标准,以促使开发人员和内部人员更自觉地开发基于AR的应用程序。从先前的研究(执行以定义一种理解看画对象的视觉行为的协议)开始,本文介绍了一种由眼动仪测量的博物馆参观者视觉行为的真实预测模型。提出了一种隐马尔可夫模型(HMM)方法,可以预测用户在画前的注意力。此外,这项研究比较了成年人和儿童之间用户的行为,将结果扩展到了不同类型的用户,从而提供了一种可靠的眼动轨迹方法。已经进行了测试,以定义感兴趣的区域(AOI)并观察访问量最大的区域,以尝试预测AOI之间的后续过渡。结果证明了我们方法的有效性和适用性,其性能评估值超过90%。

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