首页> 外文会议>European Conference on Computer Vision(ECCV 2006) pt.2; 20060507-13; Graz(AT) >Resolution-Aware Fitting of Active Appearance Models to Low Resolution Images
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Resolution-Aware Fitting of Active Appearance Models to Low Resolution Images

机译:主动外观模型对低分辨率图像的分辨率感知拟合

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Active Appearance Models (AAM) are compact representations of the shape and appearance of objects. Fitting AAMs to images is a difficult, non-linear optimization task. Traditional approaches minimize the L2 norm error between the model instance and the input image warped onto the model coordinate frame. While this works well for high resolution data, the fitting accuracy degrades quickly at lower resolutions. In this paper, we show that a careful design of the fitting criterion can overcome many of the low resolution challenges. In our resolution-aware formulation (RAF), we explicitly account for the finite size sensing elements of digital cameras, and simultaneously model the processes of object appearance variation, geometric deformation, and image formation. As such, our Gauss-Newton gradient descent algorithm not only synthesizes model instances as a function of estimated parameters, but also simulates the formation of low resolution images in a digital camera. We compare the RAF algorithm against a state-of-the-art tracker across a variety of resolution and model complexity levels. Experimental results show that RAF considerably improves the estimation accuracy of both shape and appearance parameters when fitting to low resolution data.
机译:活动外观模型(AAM)是对象形状和外观的紧凑表示。使AAM适应图像是一项困难的非线性优化任务。传统方法将模型实例与扭曲到模型坐标框架上的输入图像之间的L2范数误差最小化。虽然这对于高分辨率数据非常有效,但在较低分辨率下拟合精度会迅速下降。在本文中,我们表明,精心设计拟合标准可以克服许多低分辨率难题。在我们的分辨率感知公式(RAF)中,我们明确说明了数码相机的有限尺寸感测元件,并同时对对象外观变化,几何变形和图像形成的过程进行了建模。因此,我们的Gauss-Newton梯度下降算法不仅可以根据估计的参数合成模型实例,还可以在数码相机中模拟低分辨率图像的形成。我们在各种分辨率和模型复杂度级别上,将RAF算法与最新的跟踪器进行了比较。实验结果表明,当适合低分辨率数据时,RAF大大提高了形状和外观参数的估计精度。

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