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ACTIVE LEARNING BASED AUTOMATIC FACE SEGMENTATION FOR KINECT VIDEO

机译:基于主动学习的Kinect视频自动面部分割

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This paper presents a novel segmentation approach for extracting faces from videos. Under an active learning framework, the segmentation is conducted automatically without human interactions. A small portion of pixels are first labeled as face or non-face. Given these labeled samples, a semi-supervised spline regression model is then applied to obtain the face region. Based on the segmentation result, new pixels are selected and labeled. These two steps perform iterately until convergence. The main novelty is that color and depth data are combined to provide the labeling information. Our approach is validated via comparisons with state-of-the-art methods on real videos captured from the commodity Kinect camera.
机译:本文介绍了一种新的分段方法,用于从视频中提取面部。在一个主动学习框架下,分段是自动进行的,没有人为互动。首先将一小部分像素标记为面部或非面部。鉴于这些标记的样本,然后应用半监督的花键回归模型以获得面部区域。基于分段结果,选择并标记新像素。这两个步骤迭代地执行直到收敛。主要的新颖性是组合颜色和深度数据以提供标记信息。我们的方法是通过与商品Kinect相机捕获的真实视频的最先进方法进行验证。

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