Automatic face recognition is a research area with high popularity. Many different face recognition algorithms have been proposed in the last thirty years of intensive research in the field. With the popularity of deep learning and its capability to solve a huge variety of different problems, face recognition researchers have concentrated effort on creating better models under this paradigm. From the year 2015, state-of-the-art face recognition has been rooted in deep learning models. Despite the availability of large-scale and diverse datasets for evaluating the performance of face recognition algorithms, many of the modern datasets just combine different factors that influence face recognition, such as face pose, occlusion, illumination, facial expression and image quality. When algorithms produce errors on these datasets, it is not clear which of the factors has caused this error and, hence, there is no guidance in which direction more research is required. This work is a followup from our previous works developed in 2014 and eventually published in 2016, showing the impact of various facial aspects on face recognition algorithms. By comparing the current state-of-the-art with the best systems from the past, we demonstrate that faces under strong occlusions, some types of illumination, and strong expressions are problems mastered by deep learning algorithms, whereas recognition with low-resolution images, extreme pose variations, and open-set recognition is still an open problem. To show this, we run a sequence of experiments using six different datasets and five different face recognition algorithms in an open-source and reproducible manner. We provide the source code to run all of our experiments, which is easily extensible so that utilizing your own deep network in our evaluation is just a few minutes away.
翻译:自动面部识别是一个广受欢迎的研究领域。 许多不同的面部识别算法在过去三十年的实地密集研究中被提出。 深层学习的受欢迎程度及其解决各种不同问题的能力, 面部识别研究者集中努力在这种范式下创建更好的模型。 从2015年起, 最先进的面部识别方法就植根于深厚的学习模型。 尽管有大规模和多样化的数据集可用于评价面部识别算法的性能, 许多现代数据集只是将影响面部识别的不同因素( 如脸部姿势、隐蔽性、明亮度、面部表达和图像质量等)合并起来。 当这些数据集产生错误时, 面部识别能力将集中起来, 脸部识别能力集中起来, 因此, 没有指导更多的研究方向。 这项工作是我们2014年开发的、 最终于2016年出版的先前作品的后续活动, 显示了各种面部面部特征对面部识别算法的影响。 通过将当前状态与过去的最佳系统进行比较, 我们展示了面部的面部定位, 我们展示了这些面部的面部在深刻的深层理解中面部识别,, 以及深层图像的演化的演化过程是一种不同的演化过程, 一种不同的演化过程, 我们的演进式的演进式的演化的演化的演化, 的演进的演进的演进的演进的演进的演进的演进的演进的演进的演化过程, 的演进的演化过程是一种不同的演进式是一种不同的演进式, 。