We found a match
Your institution may have access to this item. Find your institution then sign in to continue.
- Title
Race Recognition Using Deep Convolutional Neural Networks.
- Authors
Vo, Thanh; Nguyen, Trang; Le, C. T.
- Abstract
Race recognition (RR), which has many applications such as in surveillance systems, image/video understanding, analysis, etc., is a difficult problem to solve completely. To contribute towards solving that problem, this article investigates using a deep learning model. An efficient Race Recognition Framework (RRF) is proposed that includes information collector (IC), face detection and preprocessing (FD&P), and RR modules. For the RR module, this study proposes two independent models. The first model is RR using a deep convolutional neural network (CNN) (the RR-CNN model). The second model (the RR-VGG model) is a fine-tuning model for RR based on VGG, the famous trained model for object recognition. In order to examine the performance of our proposed framework, we perform an experiment on our dataset named VNFaces, composed specifically of images collected from Facebook pages of Vietnamese people, to compare the accuracy between RR-CNN and RR-VGG. The experimental results show that for the VNFaces dataset, the RR-VGG model with augmented input images yields the best accuracy at 88.87% while RR-CNN, an independent and lightweight model, yields 88.64% accuracy. The extension experiments conducted prove that our proposed models could be applied to other race dataset problems such as Japanese, Chinese, or Brazilian with over 90% accuracy; the fine-tuning RR-VGG model achieved the best accuracy and is recommended for most scenarios.
- Subjects
CONVOLUTION codes; ARTIFICIAL neural networks; VIDEO surveillance; PROBLEM solving; COMPUTER algorithms
- Publication
Symmetry (20738994), 2018, Vol 10, Issue 11, p564
- ISSN
2073-8994
- Publication type
Article
- DOI
10.3390/sym10110564