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A Cascaded Mixture SVM Classifier for Object Detection

机译:用于物体检测的级联混合SVM分类器

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To solve the low sampling efficiency problem of negative samples in object detection and information retrieval, a cascaded mixture SVM classifier along with its learning method is proposed in this paper. The classifier is constructed by cascading one-class SVC and two-class SVC. In the learning method, first, 1SVC is trained by using the cluster features of the positive samples, then the 1SVC trained is used to collect the negative samples close to the positive samples and to eliminate the outlier positive samples, finally, the 2SVC is trained by using the positive samples and effective negative samples collected. The cascaded mixture SVM classifier integrates the merits of both 1SVC and 2SVC, and has the characters of higher detection rate and lower false positive rate, and is suitable for object detection and information retrieval. Experimental results show that the cascaded SVM classifier outperforms traditional classifiers.
机译:为了解决物体检测和信息检索中的负样品的低采样效率问题,本文提出了一种级联混合SVM分类器以及其学习方法。分类器是通过级联单级SVC和两级SVC构建的。在学习方法中,首先,通过使用正样本的群集特征训练1SVC,然后使用1SVC培训来收集靠近正样品的阴性样本,并消除最终样品,最后,2SVC训练通过使用阳性样品和收集有效的阴性样品。级联混合物SVM分类器集成了1SVC和2SVC的优点,并且具有更高的检测率和较低误差率的特征,适用于对象检测和信息检索。实验结果表明,级联的SVM分类器优于传统分类器。

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