Bringing empathy to a computerized system could significantly improve the quality of human-computer communications, as soon as machines would be able to understand customer intentions and better serve their needs. According to different studies (Literature Review), visual information is one of the most important channels of human interaction and contains significant behavioral signals, that may be captured from facial expressions. Therefore, it is consistent and natural that the research in the field of Facial Expression Recognition (FER) has acquired increased interest over the past decade due to having diverse application area including health-care, sociology, psychology, driver-safety, virtual reality, cognitive sciences, security, entertainment, marketing, etc. We propose a new architecture for the task of FER and examine the impact of domain discrimination loss regularization on the learning process. With regard to observations, including both classical training conditions and unsupervised domain adaptation scenarios, important aspects of the considered domain adaptation approach integration are traced. The results may serve as a foundation for further research in the field.
翻译:根据不同的研究(《标准评论》),视觉信息是人类互动的最重要渠道之一,包含重要的行为信号,可以从面部表情中捕捉到,因此,过去十年来,由于应用领域多种多样,包括保健、社会学、心理学、驾驶员安全、虚拟现实、认知科学、安全、娱乐、营销等,对计算机通信的质量有了显著提高,因此,对计算机计算机系统的同情心可以大大提高。根据不同的研究(《标准评论》),视觉信息是人类互动的最重要渠道之一,包含重要的行为信号,从面部表情中可以捕捉到。因此,过去10年中,由于应用领域多种多样,包括保健、社会学、心理学、驾驶员安全、虚拟现实、认知科学、安全、娱乐、营销等,对法尔的任务提出了新的结构,并审查了域歧视损失对学习过程的正规化的影响。关于观察,包括古典培训条件和未受控制的域适应情景,对考虑的域适应方法整合的重要方面进行了追踪,这是一贯和自然的。结果可作为该领域进一步研究的基础。