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Learning Dynamic GMM for Attention Distribution on Single-Face Videos

机译:学习动态GMM用于对单面视频的注意分布

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The past decade has witnessed the popularity of video conferencing, such as FaceTime and Skype. In video conferencing, almost every frame has a human face. Hence, it is necessary to predict attention on face videos by saliency detection, as saliency can be used as a guidance of regionof- interest (ROI) for the content-based applications. To this end, this paper proposes a novel approach for saliency detection in single-face videos. From the data-driven perspective, we first establish an eye tracking database which contains fixations of 70 single-face videos viewed by 40 subjects. Through analysis on our database, we investigate that most attention is attracted by face in videos, and that attention distribution within a face varies with regard to face size and mouth movement. Inspired by the previous work which applies Gaussian mixture model (GMM) for face saliency detection in still images, we propose to model visual attention on face region for videos by dynamic GMM (DGMM), the variation of which relies on face size, mouth movement and facial landmarks. Then, we develop a long shortterm memory (LSTM) neural network in estimating DGMM for saliency detection of single-face videos, so called LSTM-DGMM. Finally, the experimental results show that our approach outperforms other state-of-the-art approaches in saliency detection of single-face videos.
机译:过去十年目睹了视频会议的普及,例如FaceTime和Skype。在视频会议中,几乎每个框架都有一个人的脸。因此,有必要通过显着性检测预测面部视频,因为显着性可以用作基于内容的应用程序的区域 - 兴趣(ROI)的指导。为此,本文提出了一种单面视频显着性检测的新方法。从数据驱动的角度来看,我们首先建立一个眼跟踪数据库,其中包含40个科目查看的70个单面视频的固定。通过对我们的数据库进行分析,我们调查了最受欢迎的录像中的关注,并且在面部尺寸和嘴巴运动方面的关注分布变化。由以前的工作启发,适用高斯混合模型(GMM)在静止图像中为面部显着性检测,我们建议通过动态GMM(DGMM)对视频的面部区域进行模拟,其变化依赖于面部尺寸,嘴巴运动和面部地标。然后,我们在估计DGMM时,我们开发一个长的短期内存(LSTM)神经网络,以便为单面视频的显着性检测,所以称为LSTM-DGMM。最后,实验结果表明,我们的方法在单面视频的显着性检测中表明了其他最先进的方法。

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