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Flower Recognition Based on Transfer Learning and Adam Deep Learning Optimization Algorithm

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Published:20 September 2019Publication History

ABSTRACT

Due to the complex background of flowers and the similarity between their own categories, the traditional method of image recognition is to extract features manually, which can not solve this problem well. With the development and progress of science and technology, deep learning has gradually entered the image recognition problem and achieved good results. This paper proposes the flower recognition based on transfer learning and Adam deep learning optimization algorithm for the defects of the current mainstream convolutional neural network with deep depth and long parameters, long training time and slow convergence. The VGG16 model is modified and supplemented. At the same time, the transfer learning method and the Adam optimization algorithm are used to accelerate network convergence. Thirty kinds of flower image data sets were established by 102 Category Flower Dataset partial images and 17 Category Flower Dataset. The experimental results show that the accuracy of the test set in this paper is 98.99%. Compared with the traditional image recognition algorithm, it has the characteristics of fast convergence and high recognition accuracy.

References

  1. Miao Jinquan, Cao Weiqun (2014). Extensible Flower Species Recognition. Journal of Image and Graphics, 19(11), 1630--1638.Google ScholarGoogle Scholar
  2. YIN Baocai, WANG Wentong, WANG Lichun (2015). Review of Deep Learning Research. Journal of Beijing Polytechnic University, 1, 48--59.Google ScholarGoogle Scholar
  3. Chang Liang, Deng Xiaoming, Zhou Mingquan (2016). Convolutional Neural Networks in Image Understanding. Acta Automatica Sinica, 42(9), 1300--1312.Google ScholarGoogle Scholar
  4. ZHOU Junyu, ZHAO Yanming (2017). A review of application of convolutional neural networks in image classification and target detection. Computer Engineering and Applications, 53(13), 34--41.Google ScholarGoogle Scholar
  5. Xu Xudong, Ma Ligan (2018). Control map recognition based on transfer learning and convolutional neural network. Computer Application, 38(S2), 290--295.Google ScholarGoogle Scholar
  6. R.B.Girshick, J.Donahue, T.Darrell, et al (2014).Rich feature hierarchies for accurate object detection and semantic segmentation. Computer Vision and Pattern Recognition, 580--587.Google ScholarGoogle Scholar
  7. Szegedy C., Liu W., Jia Y., et al. (2015). Going deeper with convolutions. Proceedings of the 2015 IEEE Conference on Computer Vision and Pattern Recognition, 1--9.Google ScholarGoogle ScholarCross RefCross Ref
  8. Li Yandong, Hao Zongbo, Lei Hang (2016). Review of convolutional neural networks. Journal of Computer Applications, 36(9), 2508--2515.Google ScholarGoogle Scholar
  9. M. Simon, E. Rodner (2015). Neural activation constellations: Unsupervised part model discovery with convolutional networks. 2015 IEEE International Conference on Computer Vision and Pattern Recognition, 1143--1151.Google ScholarGoogle ScholarDigital LibraryDigital Library
  10. Zhou Zhihua. 2016. Machine Learning. Tsinghua University Press, Beijing: 121--139.Google ScholarGoogle Scholar
  11. LI Xudong, YE Mao, LI Tao (2017). Review of target detection based on convolutional neural network. Application Research of Computers, 34(10), 2881--2891.Google ScholarGoogle Scholar
  12. Liu Fangyuan, Gong Shuihua, Zhang Huangdong (2017). Research on Convolutional Neural Network Architecture and Its Application. New Industrialization, 7(11), 40--51.Google ScholarGoogle Scholar
  13. Yang Ge, Zhang Weiqiang, Huang Jing (2015). Implementation of a perceptron neural network character recognizer. Application of Electronic Technique, 41(3), 120--122.Google ScholarGoogle Scholar
  14. M. Simon, E.Rodner(2015). Neural activation constellations: Unsupervised part model discovery with convolutional networks. 2015 IEEE International Conference on Computer Vision and Pattern Recognition, 1143--1151.Google ScholarGoogle Scholar
  15. Zhai Junhai, Zhang Sufang, Hao Pu (2017). Convolutional neural network and its research progress. Journal of Hebei University:Natural Science Edition, 37(6), 640--651.Google ScholarGoogle Scholar
  16. Xia Wei, Song Wenzhu, Shi Bicheng, Liu Jia (2018). Deep reinforcement learning method based on weighted dense convolutional convolution network. Journal of Computer Applications, 38(8), 2141--2147Google ScholarGoogle Scholar

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  1. Flower Recognition Based on Transfer Learning and Adam Deep Learning Optimization Algorithm

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          cover image ACM Other conferences
          RICAI '19: Proceedings of the 2019 International Conference on Robotics, Intelligent Control and Artificial Intelligence
          September 2019
          803 pages
          ISBN:9781450372985
          DOI:10.1145/3366194

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          Association for Computing Machinery

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          Publication History

          • Published: 20 September 2019

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          RICAI '19 Paper Acceptance Rate140of294submissions,48%Overall Acceptance Rate140of294submissions,48%

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