YU Huiling, QIAN Chengshuai. Re-Identification Method of Siberian Tiger Based on Adaptive Regularization[J]. Computer Engineering and Applications, 2022, 58(8): 191-197.
[1] ARZOUMANIAN Z,HOLMBERG J,NORMAN B,et al.An astronomical pattern-matching algorithm for computer-aided identification of whale sharks Rhincodon typus[J].Journal of Applied Ecology,2005,42(6):999-1011.
[2] ARDOVINI A,CINQUE L,SANGINETO E,et al.Iden-tifying elephant photos by multi-curve matching[J].Pattern Recognition,2008,41(6):1867-1877.
[3] CARTER S J,BELL I,MILLER J,et al.Automated marine turtle photograph identification using artificial neural networks,with application to green turtles[J].Journal of Experimental Marine Biology and Ecology,2014,452:105-110.
[4] WEIDEMAN H J,JABLONS Z M,HOLMBERG J,et al.Integral curvature representation and matching algorithms for identification of dolphins and whales[J].arXiv:1708.
07785,2017.
[5] KORSCHENS M,BARZ B,DENZLER J.Towards automatic identification of elephants in the wild[J].arXiv:1812.04418,2018.
[6] LI S,LI J,LIN W,et al.Amur tiger re-identification in the wild[J].arXiv:1906.05586,2019.
[7] LIU C,ZHANG R,GUO L,et al.Part-pose guided amur tiger re-identification[C]//International Conference on Computer Vision,2019.
[8] GUO J F,PANG Z Q,YU M,et al.A novel pedestrian reidentification method based on a multiview generative adversarial network[J].IEEE Access,2020,8:181943-181954.
[9] GUO J F,PANG Z Q,YANG F,et al.Study on the method of fundus image generation based on improved GAN[J].Mathematical Problems in Engineering,2020:6309596.
[10] GENG M Y,WANG Y W,XIONG T,et al.Deep transfer learning for person re-identification[J].arXiv:1611.
05244,2016.
[11] LIN Y T,ZHENG L,ZHENG Z D,et al.Improving person re-identification by attribute and identity learning[J].Pattern Recognition,2019,95:151-161.
[12] ZHENG L,YANG Y,HAUPTMANN A G.Person re-identification:past,present and future[J].arXiv:1610.02984,2016.
[13] ZHENG Z D,ZHENG L,YANG Y.Pedestrian alignment network for large-scale person re-identification[J].IEEE Transactions on Circuits and Systems for Video Technol-ogy,2019,29(10):3037-3045.
[14] VARIOR R R,SHUAI B,LU J,et al.A Siamese long short-term memory architecture for human re-identification[J].arXiv:1607.08381,2016.
[15] ZHENG L,HUANG Y,LU H,et al.Pose-invariant embedding for deep person re-identification[J].IEEE Transactions on Image Processing,2019,28(9):4500-4509.
[16] ZHAO H Y,TIAN M Q,SUN S Y,et al.Spindle net:person re-identification with human body region guided feature decomposition and fusion[C]//IEEE Conference on Computer Vision and Pattern Recognition(CVPR),2017.
[17] WANG G S,YUAN Y F,CHEN X,et al.Learning discriminative features with multiple granularities for person re-identification[C]//International Conference on Multimedia,2018.
[18] VARIOR R R,HALOI M,WANG G.Gated Siamese convolutional neural network architecture for human re-identification[C]//European Conference on Computer Vision,2016:791-808.
[19] SCHROFF F,KALENICHENKO D,PHILBIN J.Facenet:a unified embedding for face recognition and clustering[C]//IEEE Conference on Computer Vision and Pattern Recognition(CVPR),2015.
[20] LIU H,FENG J,QI M,et al.End-to-end comparative attention networks for person re-identification[J].IEEE Transactions on Image Processing,2017,26(7):3492-3506.
[21] CHENG D,GONG Y,ZHOU S,et al.Person re-identification by multi-channel parts-based cnn with improved triplet loss function[C]//IEEE Conference on Computer Vision and Pattern Recognition(CVPR),2016.
[22] CHEN W,CHEN X,ZHANG J,et al.Beyond triplet loss:a deep quadruplet network for person re-identification[C]//IEEE Conference on Computer Vision and Pattern Recognition(CVPR),2017.
[23] CHEN D,XU D,LI H,et al.Group consistent similarity learning via deep CRF for person re-identification[C]//IEEE Conference on Computer Vision and Pattern Recognition(CVPR),2018.
[24] LAARHOVEN T V.L2 regularization versus batch and weight normalization[J].arXiv:1706.05350,2017.
[25] IOFFE S,SZEGEDY C.Batch normalization:accelerating deep network training by reducing internal covariate shift[J].arXiv:1502.03167,2015.
[26] SALIMANS T,KINGMA D P.Weight normalization:a simple reparameterization to accelerate training of deep neural networks[C]//Advances in Neural Information Processing Systems,2016:901-909.
[27] HOFFER E,BANNER R,GOLAN I,et al.Norm matters:efficient and accurate normalization schemes in deep networks[C]//Advances in Neural Information Processing Systems,2018:2160-2170.
[28] LOSHCHILOV I,HUTTER F.Decoupled weight decay regularization[J].arXiv:1711.05101,2017.
[29] LEWKOWYCZ A,GUR-ARI G.On the training dynamics of deep networks with L2 regularization[J].arXiv:2006.
08643,2020.
[30] SUN Y,ZHENG L,YANG Y,et al.Beyond part models:person retrieval with refined part pooling(and a strong convolutional baseline)[C]//European Conference on Computer Vision(ECCV),2018:480-496.
[31] KRIZHEVSKY A,HINTON G.Convolutional deep belief networks on cifar-10[Z].2010.
[32] ALEXANDER H,LUCAS B,BASTIAN L.In defense of the triplet loss for person reidentification[J].arXiv:1703.
07737,2017.
[33] NI X Y,FANG L,HUTTUNEN H.AdaptiveReID:adaptive L2 regularization in person re-identification[J].arXiv:2007.
07875,2020.
[34] ZHONG Z,ZHENG L,KANG G,et al.Random erasing data augmentation[C]//Proceedings of the AAAI Conference on Artificial Intelligence,2020,34(7):13001-13008.
[35] ZHONG Z,ZHENG L,CAO D,et al.Re-ranking person re-identification with k-reciprocal encoding[C]//IEEE Conference on Computer Vision and Pattern Recognition,2017:1318-1327.