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Weakly supervised multiscale-inception learning for web-scale face recognition
Cheng, Cheng1; Xing, Junliang2; Feng, Youji1; Liu, Pengcheng1; Shao, Xiaohu1; Li, Kai2; Zhou, Xiang-Dong1
2018
摘要Supervised deep learning models like convolutional neural network (CNN) have shown very promising results for the face recognition problem, which often require a huge number of labeled face images. Since manually labeling a large training set is a very difficult and time-consuming task, it is very beneficial if the deep model can be trained from face samples with only weak annotations. In this paper, we propose a general framework to train a deep CNN model with weakly labeled facial images that are available on the Internet. Specifically, we first design a deep Multiscale-Inception CNN (MICNN) architecture to exploit the multi-scale information for face recognition. Then, we train an initial MICNN model with only a limited number of labeled samples. After that, we propose a dual-level sample selection strategy to further fine-tune the MICNN model with the weakly labeled samples from both the sample level and class level, which aims to skip outliers and select more samples from confusing class pairs during training. Extensive experimental results on the LFW and YTF benchmarks demonstrate the effectiveness of the proposed method. © 2017 IEEE.
语种英语
DOI10.1109/ICIP.2017.8296394
会议(录)名称24th IEEE International Conference on Image Processing, ICIP 2017
页码815-819
收录类别EI
会议地点Beijing, China
会议日期September 17, 2017 - September 20, 2017