Although facial landmark localization (FLL) approaches are becoming increasingly accurate for characterizing facial regions, one question remains unanswered: what is the impact of these approaches on subsequent related tasks? In this paper, the focus is put on facial expression recognition (FER), where facial landmarks are used for face registration, which is a common usage. Since the most used datasets for facial landmark localization do not allow for a proper measurement of performance according to the different difficulties (e.g., pose, expression, illumination, occlusion, motion blur), we also quantify the performance of recent approaches in the presence of head pose variations and facial expressions. Finally, a study of the impact of these approaches on FER is conducted. We show that the landmark accuracy achieved so far optimizing the conventional Euclidean distance does not necessarily guarantee a gain in performance for FER. To deal with this issue, we propose a new evaluation metric for FLL adapted to FER.
翻译:虽然面部标志性地方化(FLL)方法对面部区域特征的定性越来越准确,但有一个问题仍未解答:这些方法对随后的相关任务有何影响?在本文件中,重点是面部表达识别(FER),即面部标志用于面部登记,这是常见的用途。由于面部标志性地方化最常用的数据集无法根据不同的困难(例如,面部、表情、照明、隐蔽、运动模糊)对业绩进行适当的衡量,我们还在有头部和面部表情的情况下对最近方法的绩效进行量化。最后,对这些方法对FER的影响进行了研究。我们表明,迄今为止取得的里程碑性准确性优化了传统的欧几里德距离并不一定能保证FER的绩效。为了解决这一问题,我们提出了一个新的FLL(FL)评估指标。