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Background Modeling via Incremental Maximum Margin Criterion

机译:通过增量最大保证金标准进行背景建模

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摘要

Subspace learning methods are widely used in background modeling to tackle illumination changes. Their main advantage is that it doesn't need to label data during the training and running phase. Recently, White et al. [1] have shown that a supervised approach can improved significantly the robustness in background modeling. Following this idea, we propose to model the background via a supervised sub-space learning called Incremental Maximum Margin Criterion (IMMC). The proposed scheme enables to initialize robustly the background and to update incrementally the eigenvectors and eigenvalues. Experimental results made on the Wallflower datasets show the pertinence of the proposed approach.
机译:子空间学习方法广泛用于背景建模中,以解决照明变化。它们的主要优点是在训练和跑步阶段不需要标记数据。最近,怀特等人。文献[1]表明,一种有监督的方法可以显着提高背景建模的鲁棒性。遵循这个想法,我们建议通过称为增量最大边际标准(IMMC)的有监督子空间学习对背景进行建模。所提出的方案使得能够鲁棒地初始化背景并且递增地更新特征向量和特征值。在Wallflower数据集上获得的实验结果表明了该方法的相关性。

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