Motion analysis: model selection and motion segmentation

N. Gheissari, A. Bab-Hadiashar
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引用次数: 15

Abstract

A new model selection criterion based on physical characteristics of underlying motion models is proposed. The proposed criterion is then incorporated in a robust motion segmentation scheme, which is based upon robust least K-th order statistical model fitting. The proposed model criterion has been compared with many other competing techniques and is shown to be more suitable for the motion segmentation task. The motion segmentation algorithm has been tested (and shown to be successful) on a number of synthetic and real image sequences.
运动分析:模型选择和运动分割
提出了一种新的基于底层运动模型物理特性的模型选择准则。然后将所提出的准则纳入基于鲁棒最小k阶统计模型拟合的鲁棒运动分割方案中。将该模型准则与许多其他竞争技术进行了比较,结果表明该模型准则更适合运动分割任务。运动分割算法已经测试(并显示是成功的)在一些合成和真实的图像序列。
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