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Learning pedestrian models for silhouette refinement

机译:学习剪影细化的行人模型

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We present a model-based method for accurate extraction of pedestrian silhouettes from video sequences. Our approach is based on two assumptions, 1) there is a common appearance to all pedestrians, and 2) each individual looks like him/herself over a short amount of time. These assumptions allow us to learn pedestrian models that encompass both a pedestrian population appearance and the individual appearance variations. Using our models, we are able to produce pedestrian silhouettes that have fewer noise pixels and missing parts. We apply our silhouette extraction approach to the NIST gait data set and show that under the gait recognition task, our model-based silhouettes result in much higher recognition rates than silhouettes directly extracted from background subtraction, or any nonmodel-based smoothing schemes.
机译:我们提出了一种基于模型的方法,用于精确提取视频序列的行人剪影。我们的方法是基于两个假设,1)所有行人都有一个常见的外观,而且2)每个人在短时间内看起来像他/她自己。这些假设允许我们学习步行模型,这些模型包括行人人口的外观和个人外观变化。使用我们的模型,我们能够生产具有较少噪音像素和缺失部件的行人剪影。我们将轮廓提取方法应用于NIST步态数据集并显示,在步态识别任务下,我们的模型的剪影导致比从背景减法或任何非模型的平滑方案中直接提取的剪影更高的识别率。

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