Improving face recognition of artificial social companions for smart working and living environments

J. Quintas
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Abstract

In this paper we address the topic of improving the performance of human-machine interaction functionalities, focusing on the example of face recognition, using a context based approach to reduce the search space for algorithms performing face identification in large face data sets. We apply this feature in the customization of the behaviour of a virtual assistant, which performs distinct "animations" depending on the identified user. The results presented in the paper refer mainly to the comparison of a face identification algorithm, Eigenfaces, while performing in various scenarios, without and with the context based approach. The conclusions of this work, point in the direction that clustering the search space by defining constrains based on context features lead to improved performance of the identification algorithm while adding some degree of simple first-order logic to the actions performed afterwards (i.e. the behaviour performed by the virtual assistant).
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为智能工作和生活环境改进人工社交伙伴的人脸识别
在本文中,我们讨论了提高人机交互功能性能的主题,重点是人脸识别的例子,使用基于上下文的方法来减少在大型人脸数据集中执行人脸识别的算法的搜索空间。我们将此功能应用于虚拟助手的行为定制中,它根据识别的用户执行不同的“动画”。本文的研究结果主要是对基于上下文的人脸识别算法Eigenfaces在不同场景下的性能进行了比较。这项工作的结论指出,通过定义基于上下文特征的约束来聚类搜索空间可以提高识别算法的性能,同时为随后执行的操作(即虚拟助手执行的行为)添加一定程度的简单一阶逻辑。
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