视频监控应用的视点不变人体特征提取

Grégory Rogez, J. J. Guerrero, C. Orrite-Uruñuela
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引用次数: 23

摘要

我们提出了一种视觉不变的人体特征提取器(形状+姿态),用于人工环境下的行人监测。我们的方法可以分为两个步骤:首先,通过将相机的视点离散成几个训练视图,建立一系列基于视图的模型;在在线阶段,使用占主导地位的3D方向计算将图像指向最近和最充分的训练平面的单应性。然后将输入图像扭曲到这个训练视图,并使用相应的基于视图的模型进行处理。模型拟合后,对得到的人体特征进行逆变换,得到原始输入图像的分割轮廓和二维姿态估计。实验结果表明,该系统在具有高透视效果的单目序列中具有良好的效果,与运动方向无关。
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View-invariant human feature extraction for video-surveillance applications
We present a view-invariant human feature extractor (shape+pose) for pedestrian monitoring in man-made environments. Our approach can be divided into 2 steps: firstly, a series of view-based models is built by discretizing the viewpoint with respect to the camera into several training views. During the online stage, the Homography that relates the image points to the closest and most adequate training plane is calculated using the dominant 3D directions. The input image is then warped to this training view and processed using the corresponding view-based model. After model fitting, the inverse transformation is performed on the resulting human features obtaining a segmented silhouette and a 2D pose estimation in the original input image. Experimental results demonstrate our system performs well, independently of the direction of motion, when it is applied to monocular sequences with high perspective effect.
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