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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Object classification by fusing SVMs and Gaussian mixtures
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Object classification by fusing SVMs and Gaussian mixtures

机译:通过融合SVM和高斯混合来进行对象分类

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摘要

We present a new technique that employs support vector machines (SVMs) and Gaussian mixture densities (GMDs) to create a generative/discriminative object classification technique using local image features. In the past, several approaches to fuse the advantages of generative and discriminative approaches were presented, often leading to improved robustness and recognition accuracy. Support vector machines are a well known discriminative classification framework but, similar to other discriminative approaches, suffer from a lack of robustness with respect to noise and overfitting. Gaussian mixtures, on the contrary, are a widely used generative technique. We present a method to directly fuse both approaches, effectively allowing to fully exploit the advantages of both. The fusion of SVMs and CMOs is done by representing SVMs in the framework of CMOs without changing the training and without changing the decision boundary. The new classifier is evaluated on the PASCAL VOC 2006 data. Additionally, we perform experiments on the USPS dataset and on four tasks from the UCI machine learning repository to obtain additional insights into the properties of the proposed approach. It is shown that for the relatively rare cases where SVMs have problems, the combined method outperforms both individual ones.
机译:我们提出了一种新技术,该技术采用支持向量机(SVM)和高斯混合密度(GMD)来创建使用局部图像特征的生成/区分对象分类技术。过去,提出了几种融合生成性和区分性方法优点的方法,通常可以提高鲁棒性和识别精度。支持向量机是众所周知的判别分类框架,但是与其他判别方法类似,它在噪声和过度拟合方面缺乏鲁棒性。相反,高斯混合是广泛使用的生成技术。我们提出了一种直接融合两种方法的方法,有效地充分利用了两种方法的优点。 SVM和CMO的融合是通过在CMO的框架中表示SVM来完成的,而无需更改训练和决策边界。新分类器根据PASCAL VOC 2006数据进行评估。此外,我们对USPS数据集和UCI机器学习存储库中的四个任务进行了实验,以获得对所提出方法的属性的更多见解。结果表明,在支持向量机有问题的相对罕见的情况下,组合方法的性能优于两个单独的方法。

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