A new facial detection model based on the faster R-CNN
conference contribution
posted on 2018-01-01, 00:00 authored by L Hao, F Jiang© Published under licence by IOP Publishing Ltd. The object detection approaches in conjunction with Fast/Faster R-CNN and YOLO have shown the benchmarking performance on several occasions. Inspired by the Refine Net, we propose a new model called Faster+ R-CNN based on Faster R-CNN, which is mainly based on iterative refinement on the proposed regions. The Faster+ R-CNN model can iteratively refine the region proposal based on previous output. We trained and tested our new model on PASCAL VOC 2007 dataset, and experiments showed that our method can iteratively improve the mean average precision (mAP) from 0.6702 to 0.6764 in object detecting task. We also demonstrate the facial detection results using the Faster+ R-CNN on the widely used Face Detection Dataset and Benchmark (FDDB) benchmark. By training the Faster+ R-CNN model on the large scale WIDER face dataset, we report the improved results on two widely used face detection benchmarks including FDDB.
History
Volume
439Pagination
1-6Location
SingaporePublisher DOI
Open access
- Yes
Link to full text
Start date
2018-09-14End date
2018-09-16ISSN
1757-8981eISSN
1757-899XLanguage
engPublication classification
E1.1 Full written paper - refereedTitle of proceedings
AEMCME 2018 : Proceedings of the 2018 International Conference on Advanced Electronic Materials, Computers and Materials Engineering (AEMCME 2018) 14–16 September 2018, SingaporeEvent
Advanced Electronic Materials, Computers and Materials Engineering. Conference (2018 : Singapore)Issue
3Publisher
IOP PublishingPlace of publication
Bristol, Eng.Series
IOP Conference Series: Materials Science and EngineeringUsage metrics
Categories
No categories selectedKeywords
Licence
Exports
RefWorksRefWorks
BibTeXBibTeX
Ref. managerRef. manager
EndnoteEndnote
DataCiteDataCite
NLMNLM
DCDC