Computer Science ›› 2021, Vol. 48 ›› Issue (2): 142-147.doi: 10.11896/jsjkx.200500158

• Computer Graphics & Multimedia • Previous Articles     Next Articles

Street Scene Change Detection Based on Multiple Difference Features Network

ZHAN Rui, LEI Yin-jie, CHEN Xun-min, YE Shu-han   

  1. College of Electronics and Information Engineering,Sichuan University,Chengdu 610065,China
  • Received:2020-05-29 Revised:2020-08-03 Online:2021-02-15 Published:2021-02-04
  • About author:ZHAN Rui,born in 1996,postgraduate.His main research interests include deep learning and computer vision.
    LEI Yin-jie,born in 1983,Ph.D,asso-ciate professor.His main research in-terests include machine learning,multimedia communication,pattern recognition and image processing.
  • Supported by:
    The National Natural Science Foundation of China (61972435).

Abstract: Street scene change detection plays an important role in the study of natural disaster damage and urban development.Its main goal is to mark out the changing areas in the pair of input images,which is essentially a semantic segmentation problem of binary classification.There may be many interference factors such as light,weather,background noise,viewpoints error and so on when taking street view pictures at different times,which challenges traditional change detection methods.To solve this problem,a new neural network model (Multiple Difference Features Network,MDFNet) is proposed.First,siamese networks are used to extract the different depth features of pairs of input images,and the difference modules are used to calculate the difference of the same depth features to effectively obtain the change information of different depth.Then,by using JPU module to fuse multiple difference features,the deep semantic information can be extracted without losing detail information.Finally,the pyramid pooling module is used to generate the change detection image of the binary classification combined with the global and local information.MDFNet has obtained 0.787 and 0.862 F-scores in the GSV and TSUNAMI part on PCD dataset with 5 fold cross-validation,which are 11.9% and 2.9% higher than the second ranked DOF-CDNet,and can segment the change details more accurately.Therefore,the proposed model can effectively deal with interferences and has an excellent detection ability for complex scenes.

Key words: Change detection, Convolution neural network, Feature fusion, Image processing, Multiple difference features, Semantic segmentation

CLC Number: 

  • TP391
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