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Robust and Accurate Shape Model Matching Using Random Forest Regression-Voting

机译:使用随机森林回归投票进行稳健而精确的形状模型匹配

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摘要

A widely used approach for locating points on deformable objects in images is to generate feature response images for each point, and then to fit a shape model to these response images. We demonstrate that Random Forest regression-voting can be used to generate high quality response images quickly. Rather than using a generative or a discriminative model to evaluate each pixel, a regressor is used to cast votes for the optimal position of each point. We show that this leads to fast and accurate shape model matching when applied in the Constrained Local Model framework. We evaluate the technique in detail, and compare it with a range of commonly used alternatives across application areas: the annotation of the joints of the hands in radiographs and the detection of feature points in facial images. We show that our approach outperforms alternative techniques, achieving what we believe to be the most accurate results yet published for hand joint annotation and state-of-the-art performance for facial feature point detection.
机译:在图像中的可变形对象上定位点的一种广泛使用的方法是为每个点生成特征响应图像,然后将形状模型拟合到这些响应图像。我们证明随机森林回归投票可用于快速生成高质量的响应图像。与其使用生成模型或判别模型来评估每个像素,不如使用回归器为每个点的最佳位置投票。我们证明,在“约束局部模型”框架中应用时,这将导致快速且准确的形状模型匹配。我们将详细评估该技术,并将其与跨应用领域的一系列常用替代方法进行比较:射线照相中的手关节注释和面部图像中的特征点检测。我们证明了我们的方法优于替代技术,实现了我们认为是迄今为止最准确的结果,用于手部关节注解和面部特征点检测的最新技术。

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