首页> 外文会议>International Conference on Articulated Motion and Deformable Objects(AMDO 2006); 20060711-14; Port d'Andratx, Mallorca(ES) >Certain Object Segmentation Based on AdaBoost Learning and Nodes Aggregation Iterative Graph-Cuts
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Certain Object Segmentation Based on AdaBoost Learning and Nodes Aggregation Iterative Graph-Cuts

机译:基于AdaBoost学习和节点聚合迭代图的特定对象分割。

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In this paper, a fast automatic segmentation algorithm based on AdaBoost learning and iterative Graph-Cuts are shown. AdaBoost learning method is introduced for automatically finding the approximate location of certain object. Then an iterative Graph-Cuts method is used to model the segmentation problem. We call our algorithm as AdaBoost Aggregation Iterative Graph-Cuts (AAIGC). Compared to previous methods based on Graph-Cuts, our method is automatic. Once certain object is trained, our algorithm can cut it out from an image containing the certain object. The segmentation process is reliably computed automatically no additional users' efforts are required. Experiments are given and the outputs are encouraging.
机译:本文提出了一种基于AdaBoost学习和迭代Graph-Cuts的快速自动分割算法。引入了AdaBoost学习方法,用于自动查找特定对象的大概位置。然后使用迭代的Graph-Cuts方法对分割问题进行建模。我们称我们的算法为AdaBoost聚合迭代图切割(AAIGC)。与以前的基于Graph-Cuts的方法相比,我们的方法是自动的。训练完某个对象后,我们的算法便可以将其从包含该对象的图像中切出。可靠地自动计算出细分过程,无需其他用户的努力。给出了实验,结果令人鼓舞。

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