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A Multimodal Fingers Classification for General Interactive Surfaces

机译:一般互动表面的多模式手指分类

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In this paper a multimodal fingers classification to detect touch points over general interactive surfaces is presented. Three different classifiers have been used: artificial neural networks, decision trees and rules learner. The data set has been created extracting statistical parameters from finger ROIs on about 40000 video samples. The accuracy obtained for the three classifiers on the test set is respectively 96,68%, 96,58% and 97,41%. The model classifiers generated work very well in real-time applications, so an innovative software called TouchPAD has been designed and implemented.
机译:在本文中,提出了一种多模式手指分类,用于检测通用互动表面上的触摸点。已经使用了三种不同的分类器:人工神经网络,决策树和规则学习者。已经在大约40000个视频样本上创建了从手指ROIS提取统计参数的数据集。测试套装上三分类器获得的准确度分别为96,68%,96,58%和97,41%。模型分类器在实时应用中生成了很好的工作,因此设计并实现了一种名为TouchPad的创新软件。

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