Dual-camera 3D head tracking for clinical infant monitoring

Ronald Saeijs, W. E. Tjon a Ten, P. D. De with
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引用次数: 2

Abstract

This paper presents a new algorithm for dual-camera 3D head tracking, intended for clinical infant monitoring. The paper includes a brief motivation with reference to the state-of-the-art in face-related image analysis. The proposed algorithm uses a clipped-ellipsoid head model and 3D head pose recovery by joint alignment of paired templates based on dense-HOG features. In the algorithm, template pairs are dynamically extracted and a limited number of template pairs are stored and re-used for drift reduction. We report experimental results on real-life videos of infants in bed in a hospital, captured in visual light as well as near-infrared light. Results show consistently good tracking behavior. For challenging video sequences, the mean tracking error in terms of endocanthion location error relative to the innercanthal distance remains below 30%. This error has proven to be sufficiently low for 3D head tracking to support infant face analysis. For this reason, the proposed algorithm is used successfully in an infant monitoring system under development.
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用于临床婴儿监测的双摄像头3D头部跟踪
本文提出了一种新的双摄像头三维头部跟踪算法,用于临床婴儿监测。本文简要介绍了人脸相关图像分析的研究进展。该算法采用剪切椭球头部模型和基于密集hog特征的配对模板联合对齐的三维头部姿态恢复方法。该算法动态提取模板对,并存储有限数量的模板对以减少漂移。我们报告了用可见光和近红外光拍摄的婴儿在医院床上的真实视频的实验结果。结果显示始终良好的跟踪行为。对于具有挑战性的视频序列,相对于内眦距离的内眦位置误差的平均跟踪误差保持在30%以下。这个误差已经被证明是足够低的3D头部跟踪,以支持婴儿面部分析。因此,该算法已成功应用于正在开发的婴儿监护系统中。
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