图像中的目标检测:支持向量机的运行复杂度和参数选择

N. Ancona, G. Cicirelli, E. Stella, A. Distante
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引用次数: 13

摘要

我们解决了与支持向量机(SVM)在实际应用领域中的分类利用相关的两个方面,例如图像中物体的检测。第一个问题是在不增加泛化误差的情况下降低参考分类器的运行时复杂度。我们证明了使用主成分分析(PCA)获得的一组新的特征来训练SVM分类器可以降低测试阶段的复杂性。此外,由于涉及的特征数量较少,我们显式地将新的输入空间映射到由所采用的核函数引起的特征空间中。由于分类器只是特征空间中的一个超平面,那么新模式的分类只涉及计算超平面的法线与模式之间的点积。第二个问题是参数选择问题。特别是,我们表明,在一个合适的验证集上测量的接收器工作特性曲线,对于在机器实现的分类器中选择具有与参考分类器相似性能的分类器是有效的。我们针对足球比赛中检测目标的特定应用解决了这两个问题。
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Object detection in images: run-time complexity and parameter selection of support vector machines
We address two aspects related to the exploitation of support vector machines (SVM) for classification in real application domains, such as the detection of objects in images. The first one concerns the reduction of the run-time complexity of a reference classifier without increasing its generalization error. We show that the complexity in test phase can be reduced by training SVM classifiers on a new set of features obtained by using principal component analysis (PCA). Moreover due to the small number of features involved, we explicitly map the new input space in the feature space induced by the adopted kernel function. Since the classifier is simply a hyperplane in the feature space, then the classification of a new pattern involves only the computation of a dot product between the normal to the hyperplane and the pattern. The second issue concerns the problem of parameter selection. In particular we show that the receiver operating characteristic curves, measured on a suitable validation set, are effective for selecting, among the classifiers the machine implements, the one having performances similar to the reference classifier. We address these two issues for the particular application of detecting goals during a football match.
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