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Human age classification using appearance images for human-robot interaction

机译:使用外观图像进行人机交互的人类年龄分类

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There are many modern applications require the function of age classification. In this study, we propose a method to classify human age using appearance images and apply it to the human-robot interactions. We first confirm that facial features based on craniology are not discriminative under the condition of seven age-groups classification. Next, our system is designed to have two stages. One is image preprocess stage; faces are detected using Haar-like features with Adaboost algorithm. Our image database is from FG-NET and MORPH databases so that we have high degree of complexity and difficulty in recognition. Then images are trained by support vector machines (SVM). To have higher recognition rate, we train RBF (radial basis function) and linear kernel models at the same time, and decide the final results by comparing the two models. These improve the accuracy under age of 30 to 49 years old while the linearity is preserved under age of 0 to 29 and above 50 years old. The final age recognition rates achieve 91.5% for female and 96% for male. We also compare the age-group classification results with subjective questionnaires, and it demonstrates that the proposed system has better performance than human's subjective estimation.
机译:有许多现代应用需要对年龄进行分类的功能。在这项研究中,我们提出了一种使用外观图像对人类年龄进行分类的方法,并将其应用于人机交互。我们首先确认基于颅骨学的面部特征在七个年龄组分类的条件下没有区别。接下来,我们的系统被设计为具有两个阶段。一是图像预处理阶段;二是图像预处理阶段。使用类似Haar的特征和Adaboost算法来检测人脸。我们的图像数据库来自FG-NET和MORPH数据库,因此我们具有高度的复杂性和识别难度。然后,通过支持向量机(SVM)训练图像。为了获得更高的识别率,我们同时训练了RBF(径向基函数)和线性核模型,并通过比较这两个模型来确定最终结果。这些提高了30至49岁以下年龄段的准确性,而线性则保持在0至29岁以下以及50岁以上年龄段。最终的年龄识别率女性达到91.5%,男性达到96%。我们还将年龄组分类结果与主观问卷进行了比较,这表明该系统比人类的主观估计具有更好的性能。

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