Computer Science ›› 2017, Vol. 44 ›› Issue (Z11): 212-216.doi: 10.11896/j.issn.1002-137X.2017.11A.044

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Plant Leaf Image Set Classification Approach Based on Non-linear Reconstruction Models

LIU Meng-nan and DU Ji-xiang   

  • Online:2018-12-01 Published:2018-12-01

Abstract: In this paper,a plant leaf image set identification approach was proposed based on non-linear reconstruction models.This approach initializes the parameters of model by performing unsupervised pre-training using Gaussian restricted Boltzmann machines(GRBMs).Then,the pre-initialized model is separately trained for images of each plant set and class-specific models are learnt.At last,based on the minimum reconstruction error from the learnt class-specific models,majority voting strategy is used for classification.Besides,in order to avoid occurring deformation during the image scaled,this paper normalized plant image by image preprocessing and a method of feature extraction was used based on k-means.The experimental results show that this approach can accurately classify the class of plant image set.

Key words: Non-linear reconstruction models,Gaussian restricted Boltzmann machines,K-means feature extract,Image preprocessing

[1] KNAPP A K,FAY P A,BLAIR J M,et al.Rainfall variability,carbon cycling,and plant species diversity in a mesic grassland[J].Science,2003,298(5601):2202-2205.
[2] POUNDS J A,PUSCHENDORF R.Ecology:clouded futures[J].Nature,2004,7(6970):107-109.
[3] 杜吉祥,汪增福.基于径向基概率神经网络的植物叶片自动识别方法[J].模式识别与人工智能,2008,21(2):206-213.
[4] LEE K,HONG K.An implementation of leaf recognition system using leaf vein and shape[J].International Journal of Bio- Science and Bio-Technology,2013,4(2):109-116.
[5] 翟传敏,汪青萍,杜吉祥.基于叶缘与叶脉分数维特征的植物叶识别方法研究[J].计算机科学,2014,5(2):170-173.
[6] CEVIKALP H,TRIGGS B.Face recognition based on imagesets[C]∥IEEE Conference on Computer Vision& Pattern Re-cognition.IEEE,2010:2567-2573.
[7] Kim T K,Kittler J,CIPOLLA R.Discriminative Learning and Recognition of Image Set Classes Using Canonical Correlations[J].IEEE Transactions on Pattern Analysis & Machine Intelligence,2007,29(6):1005-1018.
[8] WANG R,SHAN S,CHEN X,et al.Manifold-Manifold Distance with application to face recognition based on image set[C]∥IEEE Conference on Computer Vision & Pattern Recognition.2008:1-8.
[9] WANG R,CHEN X.Manifold Discriminant Analysis[C]∥IEEE Conference on Computer Vision & Pattern Recognition.2009:429-436.
[10] HARANDI M T,SANDERSON C,SHIRA ZI S,et al.Graph embedding discriminant analysis on Grassmannian manifolds for improved image set matching[C]∥IEEE Conference on Computer Vision & Pattern Recognition.2011:2705-2712.
[11] HU Y,MIAN A S,OWENS R.Face Recognition Using Sparse Approximated Nearest Points between Image Sets[J].IEEE Transactions on Pattern Analysis & Machine Intelligence,2012,34(10):1992-2004.
[12] DAVIS L S.Covariance discriminative learning:A natural and efficient approach to image set classification[C]∥IEEE Confe-rence on Computer Vision & Pattern Recognition.2012:2496-2503.
[13] YANG M,ZHU P,GOOL L V,et al.Face recognition based on regularized nearest points between image sets[C]∥IEEE International Conference and Workshops on Automatic Face and Gesture Recognition.2013:1-7.
[14] YAMAGUCHI O,FUKUI K,MAEDA K.Face Recognition Using Temporal Image Sequence[C]∥Third IEEE International Conference on Automatic Face and Gesture Recognition.IEEE,1998:318-323.
[15] ZHANG Y H,DU J X,WANG J,et al.Reverse Training for Leaf Image Set Classification[M]∥Advanced Intelligent Computing Theories and Applications.Springer International Publishing,2015:233-242.

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