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Multiple-Stage Classification of Human Poses while Watching Television

机译:看电视时人体姿势的多阶段分类

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We compared the accuracy measure between a single-stage classifier model and a multiple-stage classifier model in postural classifications using Kinect. Postural training sets were collected from Kinect's skeletal data streams, based on some of the common human postures during television watching. Three types of training sets were used, including Kinect's raw skeletal training set, skeletons with attribute selection training set, and skeletal position transformation training set. We selected four learning models, namely, neural network, naïve Bayes, logistic regression, and decision tree, for learning our data sets and classifying a testing set to find the appropriate learning model. The best accuracy value of our experiment was 87.68 % by using skeletal position transformation training set with neural network. In the future, we will apply our technique and methodology to track elderly behaviors while they are watching television.
机译:我们在使用Kinect的姿势分类中比较了单阶段分类器模型和多阶段分类器模型之间的准确性度量。基于观看电视时一些常见的人体姿势,从Kinect的骨骼数据流中收集了姿势训练集。使用了三种类型的训练集,包括Kinect的原始骨骼训练集,具有属性选择训练的骨骼和骨骼位置变换训练集。我们选择了四种学习模型,分别是神经网络,朴素贝叶斯,逻辑回归和决策树,以学习我们的数据集并对测试集进行分类以找到合适的学习模型。通过使用具有神经网络的骨骼位置变换训练集,我们的实验的最佳准确性值为87.68%。将来,我们将运用我们的技术和方法来跟踪老年人在看电视时的行为。

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