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Generic object recognition with regional statistical models and layer joint boosting

机译:具有区域统计模型和图层联合增强的通用对象识别

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摘要

This paper presents novel regional statistical models for extracting object features, and an improved discriminative learning method, called as layer joint boosting, for generic multi-class object detection and categorization in cluttered scenes. Regional statistical properties on intensities are used to find sharing degrees among features in order to recognize generic objects efficiently. Based on boosting for multi-classification, the layer characteristic and two typical weights in sharing-code maps are taken into account to keep the maximum Hamming distance in categories, and heuristic search strategies are provided in the recognition process. Experimental results reveal that, compared with interest point detectors in representation and multi-boost in learning, joint layer boosting with statistical feature extraction can enhance the recognition rate consistently, with a similar detection rate.
机译:本文提出了用于提取对象特征的新颖区域统计模型,以及一种用于在杂乱场景中进行通用的多类对象检测和分类的改进的判别学习方法,称为层联合增强。强度的区域统计属性用于查找要素之间的共享度,以便有效地识别通用对象。基于增强的多分类,考虑了共享代码映射中的层特征和两个典型权重,以保持类别中的最大汉明距离,并在识别过程中提供了启发式搜索策略。实验结果表明,与表示形式的兴趣点检测器和学习中的多重提升相比,具有统计特征提取的联合层增强可以一致地提高识别率,且检测率相似。

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