塑造人们的注意力焦点

R. Stiefelhagen, Jie Yang, A. Waibel
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引用次数: 8

摘要

本文提出了一种利用隐马尔可夫模型对会议参与者的注意力集中进行建模的方法。基于参与者的注视信息和对其位置的了解,我们采用HMM对注意力焦点进行编码和跟踪。通过安装在会议桌上的全景摄像机的面部跟踪来检测参与者的位置。我们使用神经网络从相机图像中估计参与者的凝视。我们详细讨论了该方法的实现,包括系统架构、数据收集和评估。该系统在检测来自会议的测试序列的注意力焦点方面达到了高达93%的准确率。我们在多媒体会议浏览器中使用了焦点作为索引。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling people's focus of attention
In this paper, we present an approach to model focus of attention of participants in a meeting via hidden Markov models (HMM). We employ HMM to encode and track focus of attention, based on the participants' gaze information and knowledge of their positions. The positions of the participants are detected by face tracking in the view of a panoramic camera mounted on the meeting table. We use neural networks to estimate the participants' gaze from camera images. We discuss the implementation of the approach in detail, including system architecture, data collection, and evaluation. The system has achieved an accuracy rate of up to 93% in detecting focus of attention on test sequences taken from meetings. We have used focus of attention as an index in a multimedia meeting browser.
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