首页> 外文会议>European Conference on Computer Vision(ECCV 2006) pt.3; 20060507-13; Graz(AT) >Real-Time Upper Body Detection and 3D Pose Estimation in Monoscopic Images
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Real-Time Upper Body Detection and 3D Pose Estimation in Monoscopic Images

机译:单视场图像中的实时上身检测和3D姿势估计

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This paper presents a novel solution to the difficult task of both detecting and estimating the 3D pose of humans in monoscopic images. The approach consists of two parts. Firstly the location of a human is identified by a probabalistic assembly of detected body parts. Detectors for the face, torso and hands are learnt using adaBoost. A pose likliehood is then obtained using an a priori mixture model on body configuration and possible configurations assembled from available evidence using RANSAC. Once a human has been detected, the location is used to initialise a matching algorithm which matches the silhouette and edge map of a subject with a 3D model. This is done efficiently using chamfer matching, integral images and pose estimation from the initial detection stage. We demonstrate the application of the approach to large, cluttered natural images and at near framerate operation (16fps) on lower resolution video streams.
机译:本文提出了一种新颖的解决方案,可以解决在单视场图像中检测和估计人的3D姿势这一难题。该方法包括两个部分。首先,通过检测到的身体部位的概率组合来识别人的位置。使用adaBoost可以学习面部,躯干和手部的检测器。然后使用关于身体构造的先验混合模型以及使用RANSAC从可用证据中组装的可能构造来获得姿势喜好。一旦检测到人,该位置将用于初始化匹配算法,该算法将对象的轮廓和边缘图与3D模型进行匹配。从初始检测阶段开始,使用倒角匹配,积分图像和姿态估计可以高效地完成此操作。我们演示了该方法在较大的,杂乱的自然图像上以及在较低分辨率视频流上以接近帧速率(16fps)运行时的应用。

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