Büyüktaş, BarışErdem, Ç. E.Erdem, Tanju2022-09-132022-09-1320212076-1465http://hdl.handle.net/10679/7856https://doi.org/10.23919/Eusipco47968.2020.9287639We present a novel curriculum learning (CL) algorithm for face recognition using convolutional neural networks. Curriculum learning is inspired by the fact that humans learn better, when the presented information is organized in a way that covers the easy concepts first, followed by more complex ones. It has been shown in the literature that that CL is also beneficial for machine learning tasks by enabling convergence to a better local minimum. In the proposed CL algorithm for face recognition, we divide the training set of face images into subsets of increasing difficulty based on the head pose angle obtained from the absolute sum of yaw, pitch and roll angles. These subsets are introduced to the deep CNN in order of increasing difficulty. Experimental results on the large-scale CASIA-WebFace-Sub dataset show that the increase in face recognition accuracy is statistically significant when CL is used, as compared to organizing the training data in random batches.engrestrictedAccessCurriculum learning for face recognitionconferenceObject65065400063262230013110.23919/Eusipco47968.2020.9287639Curriculum learningDeep learningFace recognition2-s2.0-85099309983