基于图像抽象的粗头部姿态估计

A. Puri, Hariprasad Kannan, P. Kalra
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引用次数: 5

摘要

我们提出了一种从单幅图像中估计人类头部姿态的算法。它建立在这样一个事实的基础上,即只需要一组有限的线索来估计人类的头部姿势,而且大多数图像包含的细节远远超过了这项任务所需的细节。因此,非真实感渲染首先用于消除图像中的不相关细节,并突出对估计头部姿势至关重要的面部特征。然后通过训练分类器在按比例缩小的抽象图像上估计最大似然姿态范围。该算法涵盖了广泛的头部方向,可以在各种图像分辨率下使用,不需要个性化初始化,并且对照明也相对不敏感。此外,与其他最先进的方法相比,它的性能具有竞争力,而且它的速度足够快,可以用于实时系统,这使它成为一种很有前途的粗略头部姿态估计方法。
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Coarse Head Pose Estimation using Image Abstraction
We present an algorithm to estimate the pose of a human head from a single image. It builds on the fact that only a limited set of cues are required to estimate human head pose and that most images contain far too many details than what are required for this task. Thus, non-photorealistic rendering is first used to eliminate irrelevant details from the picture and accentuate facial features critical to estimating head pose. The maximum likelihood pose range is then estimated by training a classifier on scaled down abstracted images. This algorithm covers a wide range of head orientations, can be used at various image resolutions, does not need personalized initialization, and is also relatively insensitive to illumination. Moreover, the facts that it performs competitively when compared with other state of the art methods and that it is fast enough to be used in real time systems make it a promising method for coarse head pose estimation.
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