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Multimodal Head Orientation Towards Attention Tracking in Smartrooms

机译:多模态头部朝向智能房间中的注意力跟踪

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This paper presents a multimodal approach to head pose estimation and 3D gaze orientation of individuals in a SmartRoom environment equipped with multiple cameras and microphones. We first introduce the two monomodal approaches as reference. In video, we estimate head orientation from color information by exploiting spatial redundancy among cameras. Audio information is processed to estimate the direction of the voice produced by a speaker making use of the directivity characteristics of the head radiation pattern. Two multimodal information fusion schemes working at data and decision levels are analyzed in terms of accuracy and robustness of the estimation. Experimental results conducted over the CLEAR evaluation database are reported and the comparison of the proposed multimodal head pose estimation algorithms with the reference monomodal approaches proves the effectiveness of the proposed approach
机译:本文提出了一种多模式方法,用于在配备了多个摄像头和麦克风的SmartRoom环境中对个人进行头部姿势估计和3D注视定向。我们首先介绍两种单峰方法作为参考。在视频中,我们通过利用摄像机之间的空间冗余从颜色信息估计头部方向。利用头部辐射图案的方向性特性,对音频信息进行处理以估计扬声器产生的语音方向。根据估计的准确性和鲁棒性,分析了两种在数据和决策级别工作的多模式信息融合方案。报告了在CLEAR评估数据库上进行的实验结果,并将所提出的多峰头部姿态估计算法与参考单峰方法进行了比较,证明了所提出方法的有效性

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