首页> 外文会议>Image Processing (ICIP 2009), 2009 >An incremental extremely random forest classifier for online learning and tracking
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An incremental extremely random forest classifier for online learning and tracking

机译:用于在线学习和跟踪的增量式极端随机森林分类器

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Decision trees have been widely used for online learning classification. Many approaches usually need large data stream to finish decision trees induction, as show notable limitations (even fail) with small data stream. In fact, there exist many real instances with small data stream. In the paper, we propose a novel incremental extremely random forest algorithm, dealing with online learning classification with small streaming data. In our method, arriving examples are stored at the leaf nodes and used to determine when to split the leaf nodes combined with Gini index, so the trees can be expanded efficiently with a few examples. Our algorithm has been applied to solve both online learning and video object tracking problems, and the results on UCI datasets and challenging video sequences demonstrate its effectiveness and robustness.
机译:决策树已广泛用于在线学习分类。许多方法通常需要大数据流才能完成决策树的归纳,因为在小数据流中显示出明显的局限性(甚至失败)。实际上,存在许多具有较小数据流的真实实例。在本文中,我们提出了一种新颖的增量式极随机森林算法,该算法用于处理小流数据的在线学习分类。在我们的方法中,到达的示例存储在叶节点处,并用于结合Gini索引确定何时拆分叶节点,因此可以通过几个示例有效地扩展树。我们的算法已应用于解决在线学习和视频对象跟踪问题,UCI数据集和具有挑战性的视频序列上的结果证明了其有效性和鲁棒性。

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