非线性头部姿态嵌入与映射的注意行为检测

Nan Hu, Weimin Huang
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引用次数: 4

摘要

本文提出了一种鲁棒检测人类注意力行为的新方案,即从视频序列中检测注意力焦点的频繁变化(FCFA)。FCFA行为很容易被人感知为人头部姿势的时间变化。在这里,我们提出了一种非线性头部姿态嵌入和映射算法来检测序列中每一帧的姿态。在ISOMAP的基础上,我们学习了不同头部姿势的独立于人的非线性嵌入空间(我们称之为二维特征空间)。设计了一种非线性插值映射和自适应局部拟合方法,将新帧映射到二维特征空间中,从而进一步获得头部姿态。然后在每个序列上提出一个熵分类器来检测FCFA行为。本文所报道的实验显示了稳健的结果
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Attentive Behavior Detection by Non-Linear Head Pose Embedding and Mapping
In this paper, we present a new scheme to robustly detect a human attentive behavior, i.e., a frequent change in focus of attention (FCFA) from video sequences. The FCFA behavior can be easily perceived by people as temporal changes of human head pose. Here, we propose a non-linear head pose embedding and mapping algorithm to detect the pose in each frame of the sequence. Developed from ISOMAP, we learn a person-independent and non-linear embedding space (we call it a 2-D feature space) for different head poses. A non-linear interpolation mapping followed by an adaptive local fitting method is designed to map new frames into the 2-D feature space where head poses can be further obtained. An entropy classifier is then proposed on each sequence to detect the FCFA behavior. Experiments reported in this paper showed robust results
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