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StructBoost: Boosting Methods for Predicting Structured Output Variables

机译:StructBoost:预测结构化输出变量的增强方法

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Boosting is a method for learning a single accurate predictor by linearly combining a set of less accurate weak learners. Recently, structured learning has found many applications in computer vision. Inspired by structured support vector machines (SSVM), here we propose a new boosting algorithm for structured output prediction, which we refer to as StructBoost. StructBoost supports nonlinear structured learning by combining a set of weak structured learners. As SSVM generalizes SVM, our StructBoost generalizes standard boosting approaches such as AdaBoost, or LPBoost to structured learning. The resulting optimization problem of StructBoost is more challenging than SSVM in the sense that it may involve exponentially many variables and constraints. In contrast, for SSVM one usually has an exponential number of constraints and a cutting-plane method is used. In order to efficiently solve StructBoost, we formulate an equivalent $1$-slack formulation and solve it using a combination of cutting planes and column generation. We show the versatility and usefulness of StructBoost on a range of problems such as optimizing the tree loss for hierarchical multi-class classification, optimizing the Pascal overlap criterion for robust visual tracking and learning conditional random field parameters for image segmentation.
机译:Boosting是通过线性组合一组较不准确的弱学习者来学习单个准确的预测变量的方法。最近,结构化学习在计算机视觉中发现了许多应用。受结构化支持向量机(SSVM)的启发,这里我们提出了一种新的用于结构化输出预测的提升算法,我们将其称为StructBoost。 StructBoost通过组合一组弱结构化学习器来支持非线性结构化学习。当SSVM对SVM进行概括时,我们的StructBoost将诸如AdaBoost或LPBoost之类的标准增强方法推广到了结构化学习中。从结果上讲,StructBoost的优化问题比SSVM更具挑战性,因为它可能涉及许多指数变量和约束。相反,对于SSVM,通常具有指数数量的约束,并且使用切割平面方法。为了有效地解决StructBoost,我们制定了等效的 $ 1 $ -slack公式,并使用剖切平面和列生成的组合来解决。我们展示了StructBoost在多种问题上的多功能性和实用性,例如优化用于树状多类分类的树损失,优化Pascal重叠准则以进行鲁棒的视觉跟踪以及学习用于图像分割的条件随机场参数。

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