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Part-based statistical models for object classification and detection

机译:用于零件分类和检测的基于零件的统计模型

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We propose using simple mixture models to define a set of mid-level binary local features based on binary oriented edge input. The features capture natural local structures in the data and yield very high classification rates when used with a variety of classifiers trained on small training sets, exhibiting robustness to degradation with clutter. Of particular interest is the use of the features as variables in simple statistical models for the objects thus enabling likelihood based classification. Pre-training decision boundaries between classes, a necessary component of non-parametric techniques, are thus avoided. Class models are trained separately with no need to access data of other classes. Experimental results are presented for handwritten character recognition, classification of deformed BTEX symbols involving hundreds of classes, and side view car detection.
机译:我们建议使用简单的混合模型基于面向二进制的边缘输入来定义一组中级二进制局部特征。当与在小型训练集上训练的各种分类器一起使用时,这些功能可捕获数据中的自然局部结构并产生非常高的分类率,表现出对杂乱降解的鲁棒性。特别令人感兴趣的是将特征用作对象的简单统计模型中的变量,从而实现了基于似然度的分类。因此避免了类之间的预训练决策边界,这是非参数技术的必要组成部分。类模型是单独训练的,无需访问其他类的数据。给出了手写字符识别,变形的BTEX符号分类(涉及数百个类别)和侧视图汽车检测的实验结果。

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