This paper presents the design of deep learning architectures which allow to classify the social relationship existing between two people who are walking in a side-by-side formation into four possible categories --colleagues, couple, family or friendship. The models are developed using Neural Networks or Recurrent Neural Networks to achieve the classification and are trained and evaluated using a database of readings obtained from humans performing an accompaniment process in an urban environment. The best achieved model accomplishes a relatively good accuracy in the classification problem and its results enhance partially the outcomes from a previous study [1]. Furthermore, the model proposed shows its future potential to improve its efficiency and to be implemented in a real robot.
翻译:本文件介绍了深层学习结构的设计,这些结构可以将同时并肩行走的两个人之间的社会关系分为四个可能的类别 -- -- 同事、夫妇、家庭或友谊 -- -- 模型是利用神经网络或经常性神经网络开发的,以达到分类,并利用一个数据库对在城市环境中进行配合过程的人的读数进行训练和评估。最成功的模型在分类问题上实现了较高的准确性,其结果部分加强了先前研究的结果[1]。此外,拟议的模型显示了未来提高效率和在真正的机器人中实施的潜力。