• Laser & Optoelectronics Progress
  • Vol. 59, Issue 18, 1810015 (2022)
Lingjie Jin1, Zhiwei Lin1、2、3、4、5、*, and Yu Hong2、4、5
Author Affiliations
  • 1College of Computer and Information Sciences, Fujian Agriculture and Forestry University, Fuzhou 350002, Fujian , China
  • 2Forestry College, Fujian Agriculture and Forestry University, Fuzhou 350002, Fujian , China
  • 3Forestry Post-Doctoral Station, Fujian Agriculture and Forestry University, Fuzhou 350002, Fujian , China
  • 4Key Laboratory of Fujian Universities for Ecology and Resource Statistics, Fuzhou 350002, Fujian , China
  • 5Cross-Strait Nature Reserve Research Center, Fujian Agriculture and Forestry University, Fuzhou 350002, Fujian , China
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    DOI: 10.3788/LOP202259.1810015 Cite this Article Set citation alerts
    Lingjie Jin, Zhiwei Lin, Yu Hong. Cloud-Type Recognition Based on Multiscale Features and Gradient Information[J]. Laser & Optoelectronics Progress, 2022, 59(18): 1810015 Copy Citation Text show less

    Abstract

    Aiming at the complicated problem of cloud image feature extraction method of all-sky imager, we propose a cloud-type classification model, that is, a dual-path gradient convolutional neural network (DGNet), by combining a double-line dense structure and gradient information to optimize the ability of the network to learn features of cloud images. The classification model is constructed using dual-thread parallel dense modules, and a gradient algorithm is applied to the feature maps. Experimental results show that compared with classic models, the accuracy of the proposed model improves significantly, reaching 67.00%. The main contributions of this study are as follows: the proposed model adopts a multithread and multiscale gradient dense module structure to reduce the loss of feature information; The gradient algorithm is used to fully extract the gradient change features of the cloud image to enhance the model’s accuracy for recognizing cloud species; A new data set of all-sky images is proposed, which contains 10 types of cloud images and 100 images of each type, accounting for 1000 images; Compared with the existing models, the proposed model shows the best accuracy, proving the feasibility of the proposed model.
    F2k=f([M2h,I1k,U2k])
    Dik=[SoftmaxCTik+1]Uik
    L=-1Mm=0M-1j=0J-1nm,jlogpm,j
    LDL1=LSL+L2
    LDL2=LSL1+LSL2+LSL+L2
    LSLWFC=LSL1fS×fSfFC×O
    LSL1W1=LSL1C14×C14T13×T13C13×C13T12×T12C12×C12T11×T11C11×C(I)
    LSL2W2=LSL2C24×C24T23×T23C23×C23T22×T22C22×C22T21×T21C21×C(I)1/2
    OA=O1~4(D11)
    OB=P4Con3P3Con2P2Con1[D21,C1/2(I)],OA1/21,C1/4(I),OA1/22,C1/8(I)
    O=FCCon(SoftmaxOA+1)OA1/2,(SoftmaxOB+1)OB
    P1=(ncorrect_1/ntest)×100%
    P2=(ncorrect_5/ntest)×100%
    Lingjie Jin, Zhiwei Lin, Yu Hong. Cloud-Type Recognition Based on Multiscale Features and Gradient Information[J]. Laser & Optoelectronics Progress, 2022, 59(18): 1810015
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