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Liu Jiazheng, Wang Xuefeng, Wang Tian. Research on image recognition of five bark texture images based on deep learning[J]. Journal of Beijing Forestry University, 2019, 41(4): 146-154. DOI: 10.13332/j.1000-1522.20180242
Citation: Liu Jiazheng, Wang Xuefeng, Wang Tian. Research on image recognition of five bark texture images based on deep learning[J]. Journal of Beijing Forestry University, 2019, 41(4): 146-154. DOI: 10.13332/j.1000-1522.20180242

Research on image recognition of five bark texture images based on deep learning

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  • Received Date: July 24, 2018
  • Revised Date: March 05, 2019
  • Available Online: April 01, 2019
  • Published Date: March 31, 2019
  • ObjectiveAiming at the problem that the existing algorithm and recognition process are too complicated in bark image recognition, a method based on deep learning was proposed to identify the bark images of different tree species.
    MethodTaking the bark texture image of five common tree species as an example, the deep learning method based on convolutional neural network was used to input the original image directly as input, and the low-level and high-level features of the image were performed by convolution and pooling layer. Automatic extraction solved the difficulty and problem of manually extracting texture features. On this basis, the CNN model structure was improved, and the ELU excitation function with Maxout was used instead of the ReLU function to solve the model offset and zero gradient problem. The loss function was improved, the specification parameters were added to optimize the structural parameters, and the learning rate was dynamically adjusted using the piecewise constant attenuation method. Finally, the softmax classifier was used to output the image categories.
    ResultA total of 10 000 images of 5 types of bark texture images were tested, and 200 images of each type were selected as test sets. The final training accuracy rate reached 93.80%, and the test set recognition accuracy rate was 97.70%. In addition, in order to verify the feasibility of the proposed method, and the traditional artificial feature extraction method, the HOG feature, the Gabor feature and the gray level co-occurrence matrix statistical method were extracted, and the SVM classifier was trained. Through experimental comparison, the method identification accuracy was the highest.
    ConclusionThe tree-skin image recognition method based on deep learning proposed in this paper is feasible, which improves the recognition efficiency and precision, and provides a new reference for the intelligent identification of tree species.
  • [1]
    Wooten J R, To S D F, Igathinathane C, et al. Discrimination of bark from wood chips through texture analysis by image processing[J]. Computers and Electronics in Agriculture, 2011, 79(1): 13−19. doi: 10.1016/j.compag.2011.08.005
    [2]
    Bertrand S, Ameur R B, Cerutti G, et al. Bark and leaf fusion systems to improve automatic tree species recognition[J]. Ecological Informatics, 2018, 46: 57−73. doi: 10.1016/j.ecoinf.2018.05.007
    [3]
    Kamal K, Qayyum R, Mathavan S, et al. Wood defects classification using laws texture energy measures and supervised learning approach[J]. Advanced Engineering Informatics, 2017, 34: 125−135. doi: 10.1016/j.aei.2017.09.007
    [4]
    多化豫, 高峰, 李福胜, 等. 基于图像处理的木片与树皮的新识别参数研究[J]. 西北林学院学报, 2015, 30(1):207−210. doi: 10.3969/j.issn.1001-7461.2015.01.34

    Duo H Y, Gao F, Li F S, et al. Approaching to the new identification parameter on wood and bark based on image processing[J]. Journal of Northwest Forestry University, 2015, 30(1): 207−210. doi: 10.3969/j.issn.1001-7461.2015.01.34
    [5]
    赵作林. 基于图像分析的北京地区杨树种类识别研究[D]. 北京: 北京林业大学, 2015.

    Zhao Z L. Research on identification of poplar species in Beijing area based on image analysis[D]. Beijing: Beijing Forestry University, 2015.
    [6]
    孙伶君, 汪杭军, 祁亨年. 基于分块LBP的树种识别研究[J]. 北京林业大学学报, 2011, 33(4):107−112.

    Sun L J, Wang H J, Qi H N. Wood recognition based on block local binary pattern (LBP)[J]. Journal of Beijing Forestry University, 2011, 33(4): 107−112.
    [7]
    李可心, 戚大伟, 牟洪波, 等. 基于灰度共生矩阵与SOM神经网络的树皮纹理特征识别[J]. 森林工程, 2017, 33(3):24−27. doi: 10.3969/j.issn.1006-8023.2017.03.006

    Li K X, Qi D W, Mou H B, et al. Identification of tree bark texture characteristic based on gray co-occurrence matrix and SOM Neural Network[J]. Forest Engineering, 2017, 33(3): 24−27. doi: 10.3969/j.issn.1006-8023.2017.03.006
    [8]
    Zeiler M D, Fergus R. Visualizing and understanding convolutional networks[C]//Proceedings of the 13th European Conference on Computer Vision. Zurich: Springer, 2014: 818−833.
    [9]
    Szegedy C, Liu W, Jia Y Q, et al. Going deeper with convolutions[C]//Proceedings of the 2015 IEEE Conference on Computer Vision and Pattern Recognition. Boston: IEEE, 2015: 1−9.
    [10]
    Hubel D H, Wiesel T N. Receptive fields, binocular interaction and functional architecture in the cat ’s visual cortex[J]. The Journal of Physiology, 1962, 160(1): 106−154. doi: 10.1113/jphysiol.1962.sp006837
    [11]
    Lecun Y, Bottou L, Bengio Y, et al. Gradient-based learning applied to document recognition[J]. Proceedings of the IEEE, 1998, 86(11): 2278−2324. doi: 10.1109/5.726791
    [12]
    周飞燕, 金林鹏, 董军. 卷积神经网络研究综述[J]. 计算机学报, 2017, 40(6):1229−1251.

    Zhou F Y, Jin L P, Dong J. Review of convolutional neural network[J]. Chinese Journal of Computers, 2017, 40(6): 1229−1251.
    [13]
    Boureau Y L, Bach F, Lecun Y, et al. Learning mid-level features for recognition[C]//Proceedings of 2010 IEEE Computer Society Conference on Computer Vision and Pattern Recognition. San Francisco: IEEE, 2010.
    [14]
    Simonyan K, Zisserman A. Very deep convolutional networks for large-scale image recognition[J/OL]. arXiv, 2015[2018−05−03]. https://arxiv.org/pdf/1409.1556.pdf.
    [15]
    Yoo H J. Deep convolution neural networks in computer vision[J]. IEIE Transactions on Smart Processing & Computing, 2015, 4(1): 35−43.
    [16]
    蒋宗礼. 人工神经网络导论[M]. 北京: 高等教育出版社, 2001.

    Jiang Z L.Introduction to artificial neural networks[M]. Beijing: Higher Education Press, 2001.
    [17]
    Glorot X, Bordes A, Bengio Y. Deep sparse rectifier neural networks[C/OL]//Proceedings of the 14th International Conference on Artificial Intelligence and Statistics[2018−03−12]. https://www.researchgate.net/publication/215616967_Deep_Sparse_Rectifier_Neural_Networks.
    [18]
    Dalal N, Triggs B. Histograms of oriented gradients for human detection[C]//International Conference on Computer Vision & Pattern Recognition (CVPR ’05). San Diego: IEEE Computer Society, 2005: 886−893.
    [19]
    Lee T S. Image representation using 2D Gabor wavelets[J]. IEEE Transactions on Pattern Analysis and Machine Intelligence, 1996, 18(10): 959−971. doi: 10.1109/34.541406
    [20]
    Haralick R M, Shanmugam K. Textural features for image classification[J]. IEEE Transactions on Systems, Man, and Cybernetics, 1973, SMC-3(6): 610−621.
    [21]
    Hearst M A, Dumais S T, Osuna E, et al. Support vector machines[J]. IEEE Intelligent Systems and Their Applications, 1998, 13(4): 18−28. doi: 10.1109/5254.708428
    [22]
    Bahrampour S, Ramakrishnan N, Schott L, et al. Comparative study of deep learning software frameworks[J/OL]. arXiv, 2016 [2018−03−05]. https://arxiv.org/pdf/1511.06435.pdf.
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