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首页> 外文期刊>EURASIP journal on advances in signal processing >Integrating Illumination, Motion, and Shape Models for Robust Face Recognition in Video
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Integrating Illumination, Motion, and Shape Models for Robust Face Recognition in Video

机译:集成照明,运动和形状模型以实现视频中的稳健人脸识别

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The use of video sequences for face recognition has been relatively less studied compared to image-based approaches. In this paper, we present an analysis-by-synthesis framework for face recognition from video sequences that is robust to large changes in facial pose and lighting conditions. This requires tracking the video sequence, as well as recognition algorithms that are able to integrate information over the entire video; we address both these problems. Our method is based on a recently obtained theoretical result that can integrate the effects of motion, lighting, and shape in generating an image using a perspective camera. This result can be used to estimate the pose and structure of the face and the illumination conditions for each frame in a video sequence in the presence of multiple point and extended light sources. We propose a new inverse compositional estimation approach for this purpose. We then synthesize images using the face model estimated from the training data corresponding to the conditions in the probe sequences. Similarity between the synthesized and the probe images is computed using suitable distance measurements. The method can handle situations where the pose and lighting conditions in the training and testing data are completely disjoint. We show detailed performance analysis results and recognition scores on a large video dataset.
机译:与基于图像的方法相比,将视频序列用于面部识别的研究相对较少。在本文中,我们提出了一种用于视频序列人脸识别的综合分析框架,该框架对于面部姿势和光照条件的大变化具有鲁棒性。这需要跟踪视频序列,以及能够在整个视频中整合信息的识别算法;我们解决了这两个问题。我们的方法基于最近获得的理论结果,该理论结果可以综合使用透视相机生成图像时运动,照明和形状的影响。该结果可用于估计在存在多个点光源和扩展光源的情况下视频序列中每个帧的脸部姿势和结构以及照明条件。为此,我们提出了一种新的逆成分估计方法。然后,我们使用从对应于探针序列中条件的训练数据估计的面部模型合成图像。使用合适的距离测量值来计算合成图像和探针图像之间的相似度。该方法可以处理训练和测试数据中的姿势和光照条件完全脱节的情况。我们在大型视频数据集上显示详细的性能分析结果和识别分数。

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