论文标题
我只有在有光线的情况下感到高兴:环境变化对情感面部表情识别的影响
I am Only Happy When There is Light: The Impact of Environmental Changes on Affective Facial Expressions Recognition
论文作者
论文摘要
人机互动(HRI)从机器学习领域的进步中受益匪浅,因为它使研究人员可以采用高性能模型来进行感知任务,例如检测和识别。尤其是深度学习模型,即进行特征提取或用于分类的预训练,现在是在HRI场景中表征人类行为的建立方法,并拥有更好地了解这些行为的社交机器人。由于HRI实验通常是小规模并限制在特定实验室环境中,因此问题是深度学习模型如何推广到特定相互作用的情况,此外,它们对环境变化的稳健性如何?这些问题对于解决HRI领域是否希望将社会机器人伴侣置于持续行动的真实环境中,即改变照明条件或移动人员仍然应该产生相同的识别结果,这一点很重要。在本文中,我们研究了使用FaceChannel框架\ Cite {Barro20}对不同图像条件对唤醒和价识别的影响。我们的结果表明,即使仅稍微更改图像属性,对人类情感状态的解释也会在正方向或负面方向上有很大差异。在使用深度学习模型以确保对HRI实验的合理解释时,我们以重要的观点总结了本文。
Human-robot interaction (HRI) benefits greatly from advances in the machine learning field as it allows researchers to employ high-performance models for perceptual tasks like detection and recognition. Especially deep learning models, either pre-trained for feature extraction or used for classification, are now established methods to characterize human behaviors in HRI scenarios and to have social robots that understand better those behaviors. As HRI experiments are usually small-scale and constrained to particular lab environments, the questions are how well can deep learning models generalize to specific interaction scenarios, and further, how good is their robustness towards environmental changes? These questions are important to address if the HRI field wishes to put social robotic companions into real environments acting consistently, i.e. changing lighting conditions or moving people should still produce the same recognition results. In this paper, we study the impact of different image conditions on the recognition of arousal and valence from human facial expressions using the FaceChannel framework \cite{Barro20}. Our results show how the interpretation of human affective states can differ greatly in either the positive or negative direction even when changing only slightly the image properties. We conclude the paper with important points to consider when employing deep learning models to ensure sound interpretation of HRI experiments.