EDVAM: a 3D eye-tracking dataset for visual attention modeling in a virtual museum

Frontiers of Information Technology & Electronic Engineering(2022)

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摘要
Predicting visual attention facilitates an adaptive virtual museum environment and provides a context-aware and interactive user experience. Explorations toward development of a visual attention mechanism using eye-tracking data have so far been limited to 2D cases, and researchers are yet to approach this topic in a 3D virtual environment and from a spatiotemporal perspective. We present the first 3D Eye-tracking Dataset for Visual Attention modeling in a virtual Museum, known as the EDVAM. In addition, a deep learning model is devised and tested with the EDVAM to predict a user’s subsequent visual attention from previous eye movements. This work provides a reference for visual attention modeling and context-aware interaction in the context of virtual museums.
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关键词
Visual attention,Virtual museums,Eye-tracking datasets,Gaze detection,Deep learning,TP391,视觉注意,虚拟博物馆,眼动数据集,注视检测,深度学习
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