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Multi-class multi-instance boosting for part-based human detection

机译:用于基于零件的人体检测的多类多实例增强

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With the purpose of designing a general learning framework for detecting human parts, we formulate this task as a classification problem over non-aligned training examples of multiple classes. We propose a new multi-class multi-instance boosting method, named MCMIBoost, for effective human parts detection in static images. MCMIBoost has two benefits. First, training examples are represented as a set of non-aligned instances, so that the alignment problem caused by human appearance variation can be handled. Second, instead of learning part detectors individually, MCMIBoost learns a unified detector for efficient detection, and uses the feature-sharing concept to design an efficient multi-class classifier. Experiment results on MIT and INRIA datasets demonstrate the superior performance of the proposed method.
机译:为了设计用于检测人体部位的通用学习框架,我们将这项任务表述为针对多个类别的非对齐训练示例的分类问题。我们提出了一种新的多类多实例增强方法,称为MCMIBoost,用于在静态图像中有效检测人体部位。 MCMIBoost有两个好处。首先,将训练示例表示为一组不对齐的实例,以便可以解决由人类外观变化引起的对齐问题。其次,MCMIBoost不再学习单独的零件检测器,而是学习用于高效检测的统一检测器,并使用特征共享概念来设计高效的多分类器。在MIT和INRIA数据集上的实验结果证明了该方法的优越性能。

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