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Classification of User Satisfaction Using Facial Expression Recognition and Machine Learning

机译:使用面部表情识别和机器学习的用户满意度分类

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In the current design processes, it has been often needed to use a level of final user satisfaction to evaluate products or services. Evaluation of the final user satisfaction on products and services has been considered an interesting challenge because it is difficult to measure the final user satisfaction according to products and services. Several papers and articles regarding the measurement of UX (user experience) as the satisfaction have been published. However, in the most approaches, UX was measured by questionnaire or survey collection method, which may lead to bias and a lack of exact feeling data of the target users. On the other hand, soft biometric data such as gender, age and facial expression can be used as the essential data for the user satisfaction analysis. In this research, we assume that the facial expression is essential in physical expressions and can be used as the accurate satisfaction data. It may be possible to capture the user’s facial expression during the particular use of products or services without users’ consciousness. However, in general cases, it is difficult to get the final user satisfaction.This study aimed to propose a framework to classify the final user satisfaction of products or services by the facial expression recognition and machine learning. The proposed framework consists of the three main steps. First, the data of facial expression, gender, age and the final user satisfaction are experimentally collected. Second, classification models are built by machine learning algorithms using the data. Finally, the model evaluation is employed to verify the accuracy of the model. After making the classification model, it is possible to classify the final user satisfaction only from the data of facial expression, gender and age.
机译:在当前的设计过程中,通常需要使用最终用户满意度来评估产品或服务。对最终用户对产品和服务的满意度评估已被认为是一个有趣的挑战,因为难以根据产品和服务衡量最终用户满意度。公布了几篇论文和有关UX(用户体验)测量的论文和文章已发布。然而,在最多的方法中,UX通过调查问卷或调查收集方法来衡量,这可能导致偏差和目标用户的精确感受数据。另一方面,诸如性别,年龄和面部表情的软生物识别数据可以用作用户满意分析的基本数据。在这项研究中,我们假设面部表情在物理表达中至关重要,可以用作准确的满足数据。在没有用户意识的情况下,可以在特定使用产品或服务期间捕获用户的面部表情。然而,在一般情况下,难以获得最终的用户满意度。本研究旨在通过面部表情识别和机器学习提出框架来分类产品或服务的最终用户满意度。拟议的框架包括三个主要步骤。首先,实验收集面部表情,性别,年龄和最终用户满意度的数据。其次,分类模型由使用数据的机器学习算法构建。最后,采用模型评估来验证模型的准确性。在进行分类模型之后,只能从面部表情,性别和年龄的数据分类最终用户满意度。

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