结合基于模型和判别方法的模块化两阶段分类系统:在孤立手写数字识别中的应用

Jonathan Milgram, R. Sabourin, M. Cheriet
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引用次数: 11

摘要

这项工作的动机是基于两个关键的观察。首先,分类算法可以分为两大类:判别方法和基于模型的方法。其次,两种类型的模式会产生问题:模糊模式和异常值。虽然,第一种方法试图最小化第一种类型的错误,但不能有效地处理异常值,第二种方法,基于每个类的模型的开发,使异常值检测成为可能,但没有足够的判别能力。因此,我们建议将这两种不同的方法结合在一个嵌入在概率框架中的模块化两阶段分类系统中。在第一阶段,我们使用基于模型的方法预估后验概率,在第二阶段,我们使用适当的支持向量分类器(SVC)重新估计最高概率。这种组合的另一个优点是减少了SVC的主要负担,减少了决策所需的处理时间,并为在类数较多的分类问题中使用SVC开辟了道路。最后,在基准数据库MNIST上的第一个实验表明,我们的动态分类过程允许保持svc的准确性,同时将复杂性降低了8.7倍,并使异常值拒绝可用。
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Combining Model-Based and Discriminative Approaches in a Modular Two-stage Classification System: Application to isolated Handwritten Digit Recognition
The motivation of this work is based on two key observations. First, the classification algorithms can be separated into two main categories: discriminative and model-based approaches. Second, two types of patterns can generate problems: ambiguous patterns and outliers. While, the first approach tries to minimize the first type of error, but cannot deal effectively with outliers, the second approach, which is based on the development of a model for each class, make the outlier detection possible, but are not sufficiently discriminant. Thus, we propose to combine these two different approaches in a modular two-stage classification system embedded in a probabilistic framework. In the first stage we pre-estimate the posterior probabilities with a model-based approach and we re-estimate only the highest probabilities with appropriate Support Vector Classifiers (SVC) in the second stage. Another advantage of this combination is to reduce the principal burden of SVC, the processing time necessary to make a decision and to open the way to use SVC in classification problem with a large number of classes. Finally, the first experiments on the benchmark database MNIST have shown that our dynamic classification process allows to maintain the accuracy of SVCs, while decreasing complexity by a factor 8.7 and making the outlier rejection available.
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