Deep learning with particle filter for person re-identification

被引:0
作者
Gwangmin Choe
Chunhwa Choe
Tianjiang Wang
Hyoson So
Cholman Nam
Caihong Yuan
机构
[1] Kim Il Sung University,Visual Information Processing Laboratory, School of Computer Science and Technology
[2] Huazhong University of Science and Technology,Intelligent and Distributed Computing Laboratory, School of Computer Science and Technology
[3] Kim Il Sung University,Information and Communication Laboratory, School of Computer Science and Technology
来源
Multimedia Tools and Applications | 2019年 / 78卷
关键词
Deep learning; Non-convex objective function; Global optimum; Particle filter; Back-propagation; Person re-identification;
D O I
暂无
中图分类号
学科分类号
摘要
Person re-identification, having attracted much attention in the multimedia community, is still challenged by the accuracy and the robustness, as the images for the verification contain such variations as light, pose, noise and ambiguity etc. Such practical challenges require relatively robust and accurate feature learning technologies. We introduced a novel deep neural network with PF-BP(Particle Filter-Back Propagation) to achieve relatively global and robust performances of person re-identification. The local optima in the deep networks themselves are still the main difficulty in the learning, in despite of several advanced approaches. A novel neural network learning, or PF-BP, was first proposed to solve the local optima problem in the non-convex objective function of the deep networks. When considering final deep network to learn using BP, the overall neural network with the particle filter will behave as the PF-BP neural network. Also, a max-min value searching was proposed by considering two assumptions about shapes of the non-convex objective function to learn on. Finally, a salience learning based on the deep neural network with PF-BP was proposed to achieve an advanced person re-identification. We test our neural network learning with particle filter aimed to the non-convex optimization problem, and then evaluate the performances of the proposed system in a person re-identification scenario. Experimental results demonstrate that the corresponding performances of the proposed deep network have promising discriminative capability in comparison with other ones.
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页码:6607 / 6636
页数:29
相关论文
共 86 条
  • [11] Hyon Gyongil(2015)Weakly Supervised Deep Metric Learning for Community-Contributed Image Retrieval IEEE Transactions on Multimedia 17 1989-1999
  • [12] Choe Chunhwa(2017)Weakly Supervised Deep Matrix Factorization for Social Image Understanding IEEE Transactions on Image Processing 26 276-288
  • [13] Ri Jonghwan(2010)Layered graph matching with composite cluster sampling IEEE Trans Pattern Anal Mach Intell 32 1426-1442
  • [14] Ji Gumhyok(2009)A stochastic graph grammar for compositional object representation and recognition Pattern Recogn 42 1297-1307
  • [15] Cui Jinshi(2015)Adaptive scene category discovery with generative learning and compositional sampling IEEE Trans Circuits Syst Video Technol 25 251-260
  • [16] Liu Ye(2015)Set-label modeling anddeep metric learning on person re-identification Neurocomputing 151 1283-1292
  • [17] Xu Yuandong(2018)Multiview dimension reduction via Hessian multiset canonical correlations Information Fusion 41 119-128
  • [18] Zhao Huijing(2016)From action to activity: Sensor-based activity recognition Neurocomputing 181 108-115
  • [19] Zha Hongbin(2015)Non-rigid visible and infrared face registration via regularized Gaussian fields criterion Pattern Recognition 48 772-784
  • [20] Dahl G(2012)Acoustic Modeling Using Deep Belief Networks IEEE Transactions on Audio, Speech, and Language Processing 20 14-22