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A Visual Attentive Model for Discovering Patterns in Eye-Tracking Data—A Proposal in Cultural Heritage

机译:在眼动数据中发现模式的视觉注意模型—文化遗产中的一项建议

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摘要

In the Cultural Heritage (CH) context, art galleries and museums employ technology devices to enhance and personalise the museum visit experience. However, the most challenging aspect is to determine what the visitor is interested in. In this work, a novel Visual Attentive Model (VAM) has been proposed that is learned from eye tracking data. In particular, eye-tracking data of adults and children observing five paintings with similar characteristics have been collected. The images are selected by CH experts and are—the three “Ideal Cities” (Urbino, Baltimore and Berlin), the Inlaid chest in the National Gallery of Marche and Wooden panel in the “Studiolo del Duca” with Marche view. These pictures have been recognized by experts as having analogous features thus providing coherent visual stimuli. Our proposed method combines a new coordinates representation from eye sequences by using Geometric Algebra with a deep learning model for automated recognition (to identify, differentiate, or authenticate individuals) of people by the attention focus of distinctive eye movement patterns. The experiments were conducted by comparing five Deep Convolutional Neural Networks (DCNNs), yield high accuracy (more than ), demonstrating the effectiveness and suitability of the proposed approach in identifying adults and children as museums’ visitors.
机译:在文化遗产(CH)的背景下,美术馆和博物馆采用技术设备来增强和个性化博物馆参观体验。但是,最具挑战性的方面是确定访问者感兴趣的内容。在这项工作中,已经提出了一种新的视觉注意模型(VAM),该模型是从眼睛跟踪数据中学到的。特别是,收集了观察五幅具有相似特征的绘画的成年人和儿童的眼动数据。这些图像是由CH专家选择的,分别是三个“理想的城市”(乌尔比诺,巴尔的摩和柏林),马尔凯国家美术馆的镶嵌箱和马尔凯视图的“ Studiolo del Duca”木制面板。这些图片已被专家认为具有类似特征,因此提供了连贯的视觉刺激。我们提出的方法通过使用几何代数和深度学习模型结合了来自眼睛序列的新坐标表示,从而通过独特的眼睛运动模式的注意力自动识别(识别,区分或认证个人)人。通过比较五个深度卷积神经网络(DCNN)产生了较高的准确性(大于),进行了实验,证明了该方法在识别成年人和儿童为博物馆访客方面的有效性和适用性。

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