• Opto-Electronic Engineering
  • Vol. 48, Issue 2, 200069 (2021)
Li Xun1、2, Li Linpeng1、*, Alexander Lazovik2, Wang Wenjie1, and Wang Xiaohua1
Author Affiliations
  • 1[in Chinese]
  • 2[in Chinese]
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    DOI: 10.12086/oee.2021.200069 Cite this Article
    Li Xun, Li Linpeng, Alexander Lazovik, Wang Wenjie, Wang Xiaohua. RGB-D object recognition algorithm based on improved double stream convolution recursive neural network[J]. Opto-Electronic Engineering, 2021, 48(2): 200069 Copy Citation Text show less
    References

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    Li Xun, Li Linpeng, Alexander Lazovik, Wang Wenjie, Wang Xiaohua. RGB-D object recognition algorithm based on improved double stream convolution recursive neural network[J]. Opto-Electronic Engineering, 2021, 48(2): 200069
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