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Making a shallow network deep: Conversion of a boosting classifier into a decision tree by boolean optimisation

机译:使浅层网络更深:通过布尔优化将提升分类器转换为决策树

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摘要

This paper presents a novel way to speed up the evaluation time of a boosting classifier. We make a shallow (flat) network deep (hierarchical) by growing a tree from decision regions of a given boosting classifier. The tree provides many short paths for speeding up while preserving the reasonably smooth decision regions of the boosting classifier for good generalisation. For converting a boosting classifier into a decision tree, we formulate a Boolean optimization problem, which has been previously studied for circuit design but limited to a small number of binary variables. In this work, a novel optimisation method is proposed for, firstly, several tens of variables i.e. weak-learners of a boosting classifier, and then any larger number of weak-learners by using a two-stage cascade. Experiments on the synthetic and face image data sets show that the obtained tree achieves a significant speed up both over a standard boosting classifier and the Fast-exit-a previously described method for speeding-up boosting classification, at the same accuracy. The proposed method as a general meta-algorithm is also useful for a boosting cascade, where it speeds up individual stage classifiers by different gains. The proposed method is further demonstrated for fast-moving object tracking and segmentation problems.
机译:本文提出了一种新颖的方法来加快升压分类器的评估时间。通过从给定的提升分类器的决策区域中生长一棵树,我们使浅(平坦)网络变得深(分层)。该树提供了许多加速的短路径,同时保留了Boosting分类器的合理平滑决策区域,以实现良好的概括。为了将升压分类器转换为决策树,我们制定了布尔优化问题,该问题先前已在电路设计中进行过研究,但仅限于少量的二进制变量。在这项工作中,提出了一种新颖的优化方法,该方法首先针对数十个变量(即升压分类器的弱学习器),然后使用两级级联对任意数量的弱学习器进行优化。对合成图像和面部图像数据集进行的实验表明,所获得的树在标准增强分类器和快速退出方面均达到了显着的速度提高,而快速退出是先前描述的用于以相同精度加速增强分类的方法。提出的方法作为一般的元算法,对于提升级联也是有用的,在该级联中,它通过不同的增益来加速各个阶段的分类器。该方法针对快速移动的目标跟踪和分割问题进行了进一步论证。

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