edge-SR: Super-Resolution For The Masses

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Text Data & NLPeSR
Overview

edge-SR: Super Resolution For The Masses

Citation

Pablo Navarrete Michelini, Yunhua Lu and Xingqun Jiang. "edge-SR: Super-Resolution For The Masses", in IEEE Winter conference on Applications of Computer Vision (WACV), 2022.

BibTeX

@inproceedings{eSR,
    title     = {edge--{SR}: Super--Resolution For The Masses},
    author    = {Navarrete~Michelini, Pablo and Lu, Yunhua and Jiang, Xingqun},
    booktitle = {Proceedings of the {IEEE/CVF} Winter Conference on Applications of Computer Vision ({WACV})},
    month     = {January},
    year      = {2022},
    pages     = {1078--1087},
    url       = {https://arxiv.org/abs/2108.10335}
}

Instructions:

  • Place input images in input directory (provided as empty directory). Color images will be converted to grayscale.

  • To upscale images run: python run.py.

    Output images will come out in output directory.

  • The GPU number and model file can be changed in run.py (in comment "CHANGE HERE").

Requirements:

  • Python 3, PyTorch, NumPy, Pillow, OpenCV

Experiment results

  • The data directory contains the file tests.pkl that has the Python dictionary with all our test results on different devices. The following sample code shows how to read the file:
>>> import pickle
>>> test = pickle.load(open('tests.pkl', 'rb'))
>>> test['Bicubic_s2']
    {'psnr_Set5': 33.72849620514912,
     'ssim_Set5': 0.9283912810369976,
     'lpips_Set5': 0.14221979230642318,
     'psnr_Set14': 30.286027790636204,
     'ssim_Set14': 0.8694934108301432,
     'lpips_Set14': 0.19383049915943826,
     'psnr_BSDS100': 29.571233006609656,
     'ssim_BSDS100': 0.8418117904964167,
     'lpips_BSDS100': 0.26246454380452633,
     'psnr_Urban100': 26.89378248655882,
     'ssim_Urban100': 0.8407461069831571,
     'lpips_Urban100': 0.21186692919582129,
     'psnr_Manga109': 30.850672809780587,
     'ssim_Manga109': 0.9340133711400112,
     'lpips_Manga109': 0.102985977955641,
     'parameters': 104,
     'speed_AGX': 18.72132628065749,
     'power_AGX': 1550,
     'speed_MaxQ': 632.5429857814075,
     'power_MaxQ': 50,
     'temperature_MaxQ': 76,
     'memory_MaxQ': 2961,
     'speed_RPI': 11.361346064182795,
     'usage_RPI': 372.8714285714285}

The keys of the dictionary identify the name of each model and its hyper--parameters using the following format:

  • Bicubic_s#,
  • eSR-MAX_s#_K#_C#,
  • eSR-TM_s#_K#_C#,
  • eSR-TR_s#_K#_C#,
  • eSR-CNN_s#_C#_D#_S#,
  • ESPCN_s#_D#_S#, or
  • FSRCNN_s#_D#_S#_M#,

where # represents an integer number with the value of the correspondent hyper-parameter. For each model the data of the dictionary contains a second dictionary with the information displayed above. This includes: number of model parameters; image quality metrics PSNR, SSIM and LPIPS measured in 5 different datasets; as well as power, speed, CPU usage, temperature and memory usage for devices AGX (Jetson AGX Xavier), MaxQ (GTX 1080 MaxQ) and RPI (Raspberry Pi 400).

Owner
Pablo
Pablo
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