基于外观和运动的多维增强回归快速人体姿态估计

A. Bissacco, Ming-Hsuan Yang, Stefano Soatto
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引用次数: 136

摘要

我们解决了在视频序列中估计人体姿势的问题,其中粗略的位置已经确定。我们通过定义图像及其时间邻居的合适特征来利用外观和运动信息,并使用增强技术学习到人体模型参数的回归映射。我们的算法可以被看作是人体跟踪器的快速初始化步骤,或者作为一个跟踪器本身。我们扩展了梯度增强技术,以学习从(旋转和缩放)Haar特征到代表全身姿势的整个关节角度集合的多维映射。我们通过从同步视频和动作捕捉步行数据中学习从图像补丁到身体关节角度的地图来测试我们的方法。我们展示了我们的技术如何能够学习一个有效的实时姿态估计器,并在公开可用的数据集上进行了验证。
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Fast Human Pose Estimation using Appearance and Motion via Multi-Dimensional Boosting Regression
We address the problem of estimating human pose in video sequences, where rough location has been determined. We exploit both appearance and motion information by defining suitable features of an image and its temporal neighbors, and learning a regression map to the parameters of a model of the human body using boosting techniques. Our algorithm can be viewed as a fast initialization step for human body trackers, or as a tracker itself. We extend gradient boosting techniques to learn a multi-dimensional map from (rotated and scaled) Haar features to the entire set of joint angles representing the full body pose. We test our approach by learning a map from image patches to body joint angles from synchronized video and motion capture walking data. We show how our technique enables learning an efficient real-time pose estimator, validated on publicly available datasets.
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