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首页> 外文期刊>IEEE Transactions on Pattern Analysis and Machine Intelligence >Registration with Uncertainties and Statistical Modeling of Shapes with Variable Metric Kernels
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Registration with Uncertainties and Statistical Modeling of Shapes with Variable Metric Kernels

机译:具有不确定度的配准和具有可变公制内核的形状的统计建模

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摘要

Registration and modeling of shapes are two important problems in computer vision and pattern recognition. Despite enormous progress made over the past decade, these problems are still open. In this paper, we advance the state of the art in both directions. First we consider an efficient registration method that aims to recover a one-to-one correspondence between shapes and introduce measures of uncertainties driven from the data which explain the local support of the recovered transformations. To this end, a free form deformation is used to describe the deformation model. The transformation is combined with an objective function defined in the space of implicit functions used to represent shapes. Once the registration parameters have been recovered, we introduce a novel technique for model building and statistical interpretation of the training examples based on a variable bandwidth kernel approach. The support on the kernels varies spatially and is determined according to the uncertainties of the registration process. Such a technique introduces the ability to account for potential registration errors in the model. Hand-written character recognition and knowledge-based object extraction in medical images are examples of applications that demonstrate the potentials of the proposed framework.
机译:形状的配准和建模是计算机视觉和模式识别中的两个重要问题。尽管在过去十年中取得了巨大进展,但这些问题仍然存在。在本文中,我们在两个方向上都提高了技术水平。首先,我们考虑一种有效的注册方法,该方法旨在恢复形状之间的一对一对应关系,并引入由数据驱动的不确定性度量,这些数据解释了所恢复的转换的本地支持。为此,使用自由形式的变形来描述变形模型。该变换与在用于表示形状的隐式函数空间中定义的目标函数组合。一旦恢复了注册参数,我们将基于可变带宽内核方法引入一种新颖的技术,用于训练样本的模型构建和统计解释。籽粒上的支持在空间上变化,并根据配准过程的不确定性确定。这种技术引入了解决模型中潜在注册错误的能力。医学图像中的手写字符识别和基于知识的对象提取是证明所提出框架潜力的应用示例。

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