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Human attribute analysis using a top-view camera based on multi-stage classification

机译:使用基于多阶段分类的顶视摄像机进行人的属性分析

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This paper proposes pedestrians' attribute analysis such as gender and whether they have bags with them based on multi-layer classification. One of the technically challenging issues is we use only top-view camera images to protect the privacy of the pedestrians. The shape features over the frames are extracted by bag-of-features (BoF) using histogram of oriented gradients (HoG) vectors with the optimized parameters. Then, multiple classifiers using support vector machine (SVM) were generated by changing the parameters for the feature generation. A set of classification results using the multiple classifiers is fed to the second stage classifier to obtain the final results. The experimental results using 60-minute video captured at Haneda Airport, Japan, show that the accuracies for the gender classification and the with/without baggage classification were 95.8% and 97.2%, respectively with low false positiveegative rates, which is a significant improvement from our previous work which yielded 68.5% and 78.8% of accuracy, respectively.
机译:本文提出了基于多层分类的行人属性分析,如性别以及是否携带行李。技术上具有挑战性的问题之一是我们仅使用顶视摄像机图像来保护行人的隐私。使用具有优化参数的定向梯度(HoG)向量直方图,通过特征包(BoF)提取框架上的形状特征。然后,通过更改用于特征生成的参数来生成使用支持向量机(SVM)的多个分类器。使用多个分类器的一组分类结果被馈送到第二阶段分类器以获得最终结果。使用在日本羽田机场拍摄的60分钟视频的实验结果表明,性别分类和有/无行李分类的准确度分别为95.8%和97.2%,假阳性率/阴性率很低,这一点非常重要与我们之前的工作相比,分别提高了68.5%和78.8%的准确度。

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