典型文献
Prior-guided GAN-based interactive airplane engine damage image augmentation method
文献摘要:
Deep learning-based methods have achieved remarkable success in object detection,but this success requires the availability of a large number of training images.Collecting sufficient train-ing images is difficult in detecting damages of airplane engines.Directly augmenting images by rota-tion,flipping,and random cropping cannot further improve the generalization ability of existing deep models.We propose an interactive augmentation method for airplane engine damage images using a prior-guided GAN to augment training images.Our method can generate many types of damages on arbitrary image regions according to the strokes of users.The proposed model consists of a prior network and a GAN.The Prior network generates a shape prior vector,which is used to encode the information of user strokes.The GAN takes the shape prior vector and random noise vectors to generate candidate damages.Final damages are pasted on the given positions of back-ground images with an improved Poisson fusion.We compare the proposed method with tradi-tional data augmentation methods by training airplane engine damage detectors with state-of-the-art object detectors,namely,Mask R-CNN,SSD,and YOLO v5.Experimental results show that training with images generated by our proposed data augmentation method achieves a better detection performance than that by traditional data augmentation methods.
文献关键词:
中图分类号:
作者姓名:
Rui HUANG;Bokun DUAN;Yuxiang ZHANG;Wei FAN
作者机构:
School of Computer Science and Technology,Civil Aviation University of China,Tianjin 300300,China
文献出处:
引用格式:
[1]Rui HUANG;Bokun DUAN;Yuxiang ZHANG;Wei FAN-.Prior-guided GAN-based interactive airplane engine damage image augmentation method)[J].中国航空学报(英文版),2022(10):222-232
A类:
pasted
B类:
Prior,guided,GAN,interactive,airplane,augmentation,Deep,learning,methods,have,achieved,remarkable,success,object,detection,but,this,requires,availability,large,number,training,images,Collecting,sufficient,difficult,detecting,damages,engines,Directly,augmenting,by,rota,flipping,random,cropping,cannot,further,generalization,existing,deep,models,We,using,prior,Our,many,types,arbitrary,regions,according,strokes,users,proposed,consists,network,generates,shape,which,used,encode,information,takes,noise,vectors,candidate,Final,given,positions,back,ground,improved,Poisson,fusion,compare,data,detectors,state,art,namely,Mask,SSD,YOLO,v5,Experimental,results,show,that,generated,our,achieves,better,performance,than,traditional
AB值:
0.489073
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