Local Minima Free Parameterized Appearance Models.

Minh Hoai Nguyen, Fernando De la Torre
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引用次数: 19

Abstract

Parameterized Appearance Models (PAMs) (e.g. Eigentracking, Active Appearance Models, Morphable Models) are commonly used to model the appearance and shape variation of objects in images. While PAMs have numerous advantages relative to alternate approaches, they have at least two drawbacks. First, they are especially prone to local minima in the fitting process. Second, often few if any of the local minima of the cost function correspond to acceptable solutions. To solve these problems, this paper proposes a method to learn a cost function by explicitly optimizing that the local minima occur at and only at the places corresponding to the correct fitting parameters. To the best of our knowledge, this is the first paper to address the problem of learning a cost function to explicitly model local properties of the error surface to fit PAMs. Synthetic and real examples show improvement in alignment performance in comparison with traditional approaches.

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局部最小自由参数化外观模型。
参数化外观模型(PAMs)通常用于对图像中物体的外观和形状变化进行建模,如特征跟踪、活动外观模型、变形模型等。虽然pam相对于其他方法有许多优点,但它们至少有两个缺点。首先,它们在拟合过程中特别容易出现局部极小值。其次,成本函数的局部最小值通常很少(如果有的话)对应于可接受的解决方案。为了解决这些问题,本文提出了一种通过显式优化使局部极小值出现在且仅出现在正确拟合参数对应的位置来学习代价函数的方法。据我们所知,这是第一篇解决学习成本函数以显式地模拟误差曲面的局部属性以拟合PAMs问题的论文。综合算例和实际算例表明,与传统方法相比,该方法的对准性能得到了改善。
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CiteScore
43.50
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0.00%
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