BoostMotion: Boosting a Discriminative Similarity Function for Motion Estimation

S. Zhou, B. Georgescu, D. Comaniciu, Jie Shao
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引用次数: 29

Abstract

Motion estimation for applications where appearance undergoes complex changes is challenging due to lack of an appropriate similarity function. In this paper, we propose to learn a discriminative similarity function based on an annotated database that exemplifies the appearance variations. We invoke the LogitBoost algorithm to selectively combine weak learners into one strong similarity function. The weak learners based on local rectangle features are constructed as nonparametric 2D piecewise constant functions, using the feature responses from both images, to strengthen the modeling power and accommodate fast evaluation. Because the negatives possess a location parameter measuring their closeness to the positives, we present a locationsensitive cascade training procedure, which bootstraps negatives for later stages of the cascade from the regions closer to the positives. This allows viewing a large number of negatives and steering the training process to yield lower training and test errors. In experiments of estimating the motion for the endocardial wall of the left ventricle in echocardiography, we compare the learned similarity function with conventional ones and obtain improved performances. We also contrast the proposed method with a learning-based detection algorithm to demonstrate the importance of temporal information in motion estimation. Finally, we insert the learned similarity function into a simple contour tracking algorithm and find that it reduces drifting.
BoostMotion:增强用于运动估计的判别相似函数
由于缺乏适当的相似函数,对于外观经历复杂变化的应用程序的运动估计具有挑战性。在本文中,我们提出了一种基于注释数据库的判别相似函数,以举例说明外观变化。我们调用LogitBoost算法选择性地将弱学习器组合成一个强相似函数。基于局部矩形特征的弱学习器被构造为非参数二维分段常数函数,利用两幅图像的特征响应来增强建模能力和适应快速评估。由于负值具有一个位置参数来衡量它们与正值的接近程度,因此我们提出了一个位置敏感级联训练过程,该过程从更接近正值的区域中引导负值用于级联的后期阶段。这允许查看大量的负面和指导训练过程,以产生更低的训练和测试错误。在超声心动图中估计左心室心内膜壁运动的实验中,我们将学习到的相似函数与传统的相似函数进行了比较,得到了更好的效果。我们还将所提出的方法与基于学习的检测算法进行了对比,以证明时间信息在运动估计中的重要性。最后,我们将学习到的相似函数插入到一个简单的轮廓跟踪算法中,发现它减少了漂移。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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