Laser & Optoelectronics Progress, Volume. 60, Issue 12, 1210002(2023)

Intelligent Detection Algorithm for Small Targets Based on Super-Resolution Reconstruction

Xinyue Cai1, Yang Zhou1,2,3、*, Xiaofei Hu1,2, Lü Liang1,2,3, Luying Zhao1,4, and Yangzhao Peng1
Author Affiliations
  • 1Institute of Geospatial Information, Information Engineer University, Zhengzhou 450001, Henan, China
  • 2Collaborative Innovation Center of Geo-Information Technology for Smart Central Plains, Henan Province, Zhengzhou 450001, Henan, China
  • 3Key Laboratory of Spatiotemporal Perception and Intelligent Processing, Ministry of Natural Resources, Zhengzhou 450001, Henan, China
  • 4Henan Technical College of Construction, Zhengzhou 450001, Henan, China
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    Figures & Tables(11)
    Entire flow diagram
    Image blocking. (a) Direct blocking; (b) overlap blocking
    Schematic of overlap block. (a) Schematic of edge image; (b) schematic of middle image
    Structure map of SR sharpening module
    Multi-scale sharpening target detection model. (a) Overall model; (b) structure of added layer
    Model of edge detection sharpening
    Reconstruction results of each model. (a) Scaling factor of ×2; (b) scaling factor of ×4; (c) scaling factor of ×8
    Visual comparison of target detection effect
    • Table 1. Comparison results obtained by using proposed method and latest SR methods

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      Table 1. Comparison results obtained by using proposed method and latest SR methods

      ScaleMethodDIV2KSet5Set14BSD100
      PSNR/SSIMPSNR/SSIMPSNR/SSIMPSNR/SSIM
      ×2SRCNN37.05/0.945836.66/0.929930.24/0.868829.56/0.8431
      ×2EDSR38.55/0.968838.20/0.960634.02/0.920432.57/0.9001
      ×2ESRGAN38.13/0.966437.63/0.958833.04/0.911831.85/0.8942
      ×2DRN37.74/0.962037.03/0.951333.98/0.919232.52/0.8590
      ×2LIIF-edsr34.99/0.935338.17/0.936533.97/0.889132.32/0.8642
      ×2Proposed mothed38.19/0.969837.94/0.961233.52/0.928532.14/0.9108
      ×4SRCNN32.58/0.905230.49/0.862827.50/0.751326.90/0.7101
      ×4EDSR34.12/0.926432.62/0.898428.94/0.790127.71/0.7006
      ×4ESRGAN34.08/0.911832.60/0.900228.88/0.789627.76/0.7432
      ×4DRN34.16/0.925332.68/0.901028.93/0.790027.78/0.7440
      ×4LIIF-edsr29.27/0.818332.50/0.851128.80/0.737727.74/0.7183
      ×4Proposed mothed34.14/0.931032.52/0.912328.90/0.802327.70/0.7520
      ×8SRCNN28.85/0.711025.33/0.68923.85/0.593022.31/0.5526
      ×8EDSR27.47/0.791326.96/0.775024.91/0.640023.19/0.5680
      ×8ESRGAN25.72/0.741426.00/0.702723.14/0.657725.96/0.6375
      ×8DRN28.96/0.786127.41/0.790025.25/0.652024.98/0.6050
      ×8LIIF-edsr27.09/0.742227.14/0.777525.15/0.643824.91/0.5832
      ×8Proposed mothed28.93/0.796426.98/0.779225.42/0.662325.66/0.6458
    • Table 2. Comparison results among proposed method and other methods on PASCAL VOC dataset

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      Table 2. Comparison results among proposed method and other methods on PASCAL VOC dataset

      MethodBackbonemAP /%FPSGFLOPsModel size /MB
      YOLOv3_TinyDarknet-Tiny58.225.00.482.3
      FCOSResNet76.4143.930
      SSD300VGG1677.246314.8
      FSSDVGG1680.935.7406.5
      DSSDResNet10181.55.579122
      TSDSENet154+DCN83.02.77.358.9
      Proposed methodSSD30085.328357.8
    • Table 3. Comparison results among our method and other methods on COCO 2017 dataset

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      Table 3. Comparison results among our method and other methods on COCO 2017 dataset

      MethodBackbonemAPAP50AP75APSAPMAPL
      YOLOv3_TinyDarknet-Tiny33.057.934.418.335.441.9
      FCOSResNet44.764.148.427.647.555.6
      SSD300VGG1625.143.125.86.625.941.4
      FSSDVGG1631.852.833.514.235.145.0
      DSSDResNet10133.253.335.213.035.451.1
      TSDSENet154+DCN51.274.956.033.854.864.2
      Proposed methodSSD30054.074.258.743.555.860.7
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    Xinyue Cai, Yang Zhou, Xiaofei Hu, Lü Liang, Luying Zhao, Yangzhao Peng. Intelligent Detection Algorithm for Small Targets Based on Super-Resolution Reconstruction[J]. Laser & Optoelectronics Progress, 2023, 60(12): 1210002

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    Paper Information

    Category: Image Processing

    Received: Mar. 4, 2022

    Accepted: May. 31, 2022

    Published Online: Jun. 5, 2023

    The Author Email: Zhou Yang (zhouyang3d@163.com)

    DOI:10.3788/LOP220882

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