| import os |
| from PIL import Image |
| from pathlib import Path |
| import numpy as np |
| import random |
| |
| |
| |
| import re |
| import json |
|
|
| |
| base_rt = f'/home/work/shared-fi-datasets-01/users/hsiang.chen/Project/Datasets/IR' |
| dataset_dict = { |
| |
| |
| "HR": { |
| "DIV2K": {'train': 'SuperResolution/DIV2K/metas/DIV2K_train_HR.list', |
| 'val': 'SuperResolution/DIV2K/metas/DIV2K_valid_HR.list'}, |
| "Flickr2K": {'train': 'SuperResolution/Flickr2K/metas/Flickr2K_HR.list'}, |
| "OST": {'train': 'SuperResolution/OST/metas/OST_HR.list'}, |
| }, |
|
|
| "Low Resolution": { |
| "DIV2K": {'train1': 'SuperResolution/DIV2K/metas/DIV2K_train_pair_SR1.list', |
| 'train2': 'SuperResolution/DIV2K/metas/DIV2K_train_pair_SR2.list', |
| 'train3': 'SuperResolution/DIV2K/metas/DIV2K_train_pair_SR3.list', |
| 'val': 'SuperResolution/DIV2K/metas/DIV2K_valid_pair_SR.list'}, |
| "Flickr2K": {'train1': 'SuperResolution/Flickr2K/metas/Flickr2K_train_pair_SR1.list', |
| 'train2': 'SuperResolution/Flickr2K/metas/Flickr2K_train_pair_SR2.list', |
| 'train3': 'SuperResolution/Flickr2K/metas/Flickr2K_train_pair_SR3.list'}, |
| "OST": {'train1': 'SuperResolution/OST/metas/OST_train_pair_SR1.list', |
| 'train2': 'SuperResolution/OST/metas/OST_train_pair_SR2.list', |
| 'train3': 'SuperResolution/OST/metas/OST_train_pair_SR3.list'}, |
| }, |
|
|
| |
| "Rain": { |
| "RainTrainL": {'train': 'Derain/RainTrainL/metas/train.list'}, |
| "Rain100L": {'test': 'Derain/Rain100L/metas/test.list'}, |
| "LHPRain": {'train': 'Derain/LHPRain/metas/train.list', |
| 'val': 'Derain/LHPRain/metas/val.list', |
| 'test': 'Derain/LHPRain/metas/test.list'}, |
| "UHDRain": {'train': 'Derain/UHD-Rain/metas/train.list', |
| 'test': 'Derain/UHD-Rain/metas/test.list'}, |
| "Practical": {'test': 'Derain/Practical/metas/test.list'}, |
| }, |
|
|
| |
| "RainDrop": { |
| "RainDrop": {'train': 'Derain/RainDrop/metas/Raindrop_train.list', |
| 'test_a': 'Derain/RainDrop/metas/Raindrop_test_a.list', |
| 'test_b': 'Derain/RainDrop/metas/Raindrop_test_b.list'}, |
| "RainDS_syn_rainstreak": {'train': 'Derain/RainDS/metas/RainDS_syn_train_rainstreak.list', |
| 'test': 'Derain/RainDS/metas/RainDS_syn_test_rainstreak.list'}, |
| "RainDS_syn_raindrop": {'train': 'Derain/RainDS/metas/RainDS_syn_train_raindrop.list', |
| 'test': 'Derain/RainDS/metas/RainDS_syn_test_raindrop.list'}, |
| "RainDS_syn_rainstreak_raindrop": {'train': 'Derain/RainDS/metas/RainDS_syn_train_rainstreak_raindrop.list', |
| 'test': 'Derain/RainDS/metas/RainDS_syn_test_rainstreak_raindrop.list'}, |
| "RainDS_real_rainstreak": {'train': 'Derain/RainDS/metas/RainDS_real_train_set_rainstreak.list', |
| 'test': 'Derain/RainDS/metas/RainDS_real_test_set_rainstreak.list'}, |
| "RainDS_real_raindrop": {'train': 'Derain/RainDS/metas/RainDS_real_train_set_raindrop.list', |
| 'test': 'Derain/RainDS/metas/RainDS_real_test_set_raindrop.list'}, |
| "RainDS_real_rainstreak_raindrop": {'train': 'Derain/RainDS/metas/RainDS_real_train_set_rainstreak_raindrop.list', |
| 'test': 'Derain/RainDS/metas/RainDS_real_test_set_rainstreak.list'}, |
| }, |
|
|
| |
| "Fog":{ |
| "SOTS": {'test': 'Dehaze/SOTS/metas/test.list'}, |
| "OTS": {'train': 'Dehaze/OTS/metas/train.list'}, |
| "4kID": {'train': 'Dehaze/4kID/metas/train.list', |
| 'test': 'Dehaze/4kID/metas/test.list'}, |
| "Unann": {'test': 'Dehaze/UnannotatedHazyImages/metas/test.list'}, |
| "NH-Haze": {'test': 'Dehaze/NH-Haze/metas/test.list'}, |
| }, |
|
|
| |
| "Noise": { |
| "BSD400": {'train': 'Denoise/BSD400/metas/BSD400.list', |
| 'train1': 'Denoise/BSD400/metas/BSD400_Noise_L1.list', |
| 'train2': 'Denoise/BSD400/metas/BSD400_Noise_L3.list', |
| 'train3': 'Denoise/BSD400/metas/BSD400_Noise_L5.list',}, |
| "WED": {'train': 'Denoise/WaterlooED/metas/WaterlooED.list', |
| 'train1': 'Denoise/WaterlooED/metas/WaterlooED_Noise_L1.list', |
| 'train2': 'Denoise/WaterlooED/metas/WaterlooED_Noise_L3.list', |
| 'train3': 'Denoise/WaterlooED/metas/WaterlooED_Noise_L5.list',}, |
| "BSD68": {'test': 'Denoise/BSD68/metas/BSD68.list', |
| 'test1': 'Denoise/BSD68/metas/BSD68_Noise_L1.list', |
| 'test2': 'Denoise/BSD68/metas/BSD68_Noise_L3.list', |
| 'test3': 'Denoise/BSD68/metas/BSD68_Noise_L5.list'}, |
| "Urban": {'test': 'Denoise/Urban100/metas/Urban100.list', |
| 'test1': 'Denoise/Urban100/metas/Urban100_Noise_L1.list', |
| 'test2': 'Denoise/Urban100/metas/Urban100_Noise_L3.list', |
| 'test3': 'Denoise/Urban100/metas/Urban100_Noise_L5.list'}, |
| "CBSD68": {'test': 'Denoise/CBSD68/metas/CBSD68.list', |
| 'test1': 'Denoise/CBSD68/metas/CBSD68_Noise_L1.list', |
| 'test2': 'Denoise/CBSD68/metas/CBSD68_Noise_L3.list', |
| 'test3': 'Denoise/CBSD68/metas/CBSD68_Noise_L5.list',}, |
| "Kodak": {'test': 'Denoise/Kodak/metas/Kodak.list', |
| 'test1': 'Denoise/Kodak/metas/Kodak_Noise_L1.list', |
| 'test2': 'Denoise/Kodak/metas/Kodak_Noise_L3.list', |
| 'test3': 'Denoise/Kodak/metas/Kodak_Noise_L5.list'}, |
| "McMaster": {'test': 'Denoise/McMaster/metas/McMaster.list', |
| 'test1': 'Denoise/McMaster/metas/McMaster_Noise_L1.list', |
| 'test2': 'Denoise/McMaster/metas/McMaster_Noise_L3.list', |
| 'test3': 'Denoise/McMaster/metas/McMaster_Noise_L5.list'}, |
| "Set12": {'test': 'Denoise/Set12/metas/Set12.list', |
| 'test1': 'Denoise/Set12/metas/Set12_Noise_L1.list', |
| 'test2': 'Denoise/Set12/metas/Set12_Noise_L3.list', |
| 'test3': 'Denoise/Set12/metas/Set12_Noise_L5.list',}, |
| "SIDD": {'train': 'Denoise/SIDD/metas/train.list', |
| 'test': 'Denoise/SIDD/metas/test.list'}, |
|
|
| "DIV2K": {'train1': 'SuperResolution/DIV2K/metas/DIV2K_train_pair_Noise_L1.list', |
| 'train2': 'SuperResolution/DIV2K/metas/DIV2K_train_pair_Noise_L3.list', |
| 'train3': 'SuperResolution/DIV2K/metas/DIV2K_train_pair_Noise_L5.list', |
| 'val': 'SuperResolution/DIV2K/metas/DIV2K_valid_pair_Noise.list'}, |
| "Flickr2K": {'train1': 'SuperResolution/Flickr2K/metas/Flickr2K_train_pair_Noise_L1.list', |
| 'train2': 'SuperResolution/Flickr2K/metas/Flickr2K_train_pair_Noise_L3.list', |
| 'train3': 'SuperResolution/Flickr2K/metas/Flickr2K_train_pair_Noise_L5.list'}, |
| }, |
|
|
| |
| "Snow": { |
| "Snow100k": {'train': 'Desnow/Snow100k/metas/train.list'}, |
| "Snow100k-S": {'test': 'Desnow/Snow100k/metas/test_S.list'}, |
| "Snow100k-M": {'test': 'Desnow/Snow100k/metas/test_M.list'}, |
| "Snow100k-L": {'test': 'Desnow/Snow100k/metas/test_L.list'}, |
| "Snow100k-R": {'test': 'Desnow/Snow100k/metas/test_realistic.list'}, |
| "UHDSnow": {'train': 'Desnow/UHD-Snow/metas/train.list', |
| 'test': 'Desnow/UHD-Snow/metas/test.list'}, |
| }, |
|
|
| |
| "Blur": { |
| "GoPro": {'train': 'Deblur/GoPro/metas/train.list', |
| 'test': 'Deblur/GoPro/metas/test.list'}, |
| "HIDE": {'train': 'Deblur/HIDE/metas/train.list', |
| 'test': 'Deblur/HIDE/metas/test.list'}, |
| "RealBlur-J": {'test': 'Deblur/RealBlur-J_ECC_IMCORR_centroid_itensity_ref/metas/test.list'}, |
| "RealBlur-R": {'test': 'Deblur/RealBlur-R_BM3D_ECC_IMCORR_centroid_itensity_ref/metas/test.list'}, |
| }, |
|
|
| |
| "Low-light": { |
| "LOL": {'train': 'LowLight/LOL/metas/train.list', |
| 'test': 'LowLight/LOL/metas/test.list'}, |
| "DICM": {'test': 'LowLight/DICM/metas/test.list'}, |
| "MEF": {'test': 'LowLight/MEF/metas/test.list'}, |
| "NPE": {'test': 'LowLight/NPE/metas/test.list'}, |
| "LIME": {'test': 'LowLight/LIME/metas/test.list'}, |
| "VV": {'test': 'LowLight/VV/metas/test.list'}, |
| }, |
|
|
| |
| "Unknown": { |
| "UDC": {'val': 'Other/UDC/metas/val.list', |
| 'test': 'Other/UDC/metas/test.list'}, |
| }, |
|
|
| |
| "Composite": { |
| "CDD": { |
| 'train': 'Composite/CDD11/metas/train.list', |
| 'test_haze': 'Composite/CDD11/metas/test_haze.list', |
| 'test_haze_rain': 'Composite/CDD11/metas/test_haze_rain.list', |
| 'test_haze_snow': 'Composite/CDD11/metas/test_haze_snow.list', |
| 'test_low': 'Composite/CDD11/metas/test_low.list', |
| 'test_low_haze': 'Composite/CDD11/metas/test_low_haze.list', |
| 'test_low_haze_rain': 'Composite/CDD11/metas/test_low_haze_rain.list', |
| 'test_low_haze_snow': 'Composite/CDD11/metas/test_low_haze_snow.list', |
| 'test_low_rain': 'Composite/CDD11/metas/test_low_rain.list', |
| 'test_low_snow': 'Composite/CDD11/metas/test_low_snow.list', |
| 'test_rain': 'Composite/CDD11/metas/test_rain.list', |
| 'test_snow': 'Composite/CDD11/metas/test_snow.list', |
| }, |
| }, |
| } |
|
|
| def IRImageData(listfile): |
| |
| paths = [] |
| with open(listfile) as fin: |
| for line in fin: |
| line = line.strip().split() |
| if len(line) == 3: |
| paths.append(line) |
| paths = sorted(paths) |
| |
| LQ_list = [] |
| HQ_list = [] |
| labels = [] |
| for data in paths: |
| lq_pth, hq_pth, label = data |
| if os.path.isfile(lq_pth): |
| LQ_list.append(lq_pth) |
| else: |
| LQ_list.append(None) |
|
|
| if os.path.isfile(hq_pth): |
| HQ_list.append(hq_pth) |
| else: |
| HQ_list.append(None) |
|
|
| |
| return LQ_list, HQ_list |
|
|
| |
| question_dict = { |
| "Full-Reference": { |
| "ONE": [ |
| "Compared to the reference, what ONE distortion stands out most in the evaluated image?", |
| "Determine the leading ONE degradation when comparing the evaluated image to the reference.", |
| "Determine the most impactful ONE distortion in the evaluated image compared to the reference.", |
| "Highlight the most significant ONE distortion in the evaluated image in comparison to the reference.", |
| "Identify the chief ONE degradation in the evaluated image when compared to the reference.", |
| "Identify the most notable ONE distortion in the evaluated image's quality when compared to the reference.", |
| "In comparison to the reference, what ONE distortion is most prominent in the evaluated image?", |
| "What ONE distortion is most apparent in the evaluated image relative to the reference?", |
| "What ONE distortion most significantly affects the evaluated image compared to the reference?", |
| "What ONE distortion stands out in the evaluated image against the reference?", |
| "What critical ONE quality degradation is present in the evaluated image versus the reference?", |
| ], |
| "TWO": [ |
| "Compared to the reference, what TWO distortions stand out most in the evaluated image?", |
| "Determine the leading TWO degradations when comparing the evaluated image to the reference.", |
| "Determine the most impactful TWO distortions in the evaluated image compared to the reference.", |
| "Highlight the most significant TWO distortions in the evaluated image in comparison to the reference.", |
| "Identify the chief TWO degradations in the evaluated image when compared to the reference.", |
| "Identify the most notable TWO distortions in the evaluated image's quality when compared to the reference.", |
| "In comparison to the reference, what TWO distortions are most prominent in the evaluated image?", |
| "What TWO distortions are most apparent in the evaluated image relative to the reference?", |
| "What TWO distortions most significantly affect the evaluated image compared to the reference?", |
| "What TWO distortions stand out in the evaluated image against the reference?", |
| "What critical TWO quality degradations are present in the evaluated image versus the reference?", |
| ], |
| "Common": [ |
| "Compared to the reference, what distortion(s) stand out most in the evaluated image?", |
| "Determine the leading degradation(s) when comparing the evaluated image to the reference.", |
| "Determine the most impactful distortion(s) in the evaluated image compared to the reference.", |
| "Highlight the most significant distortion(s) in the evaluated image in comparison to the reference.", |
| "Identify the chief degradation(s) in the evaluated image when compared to the reference.", |
| "Identify the most notable distortion(s) in the evaluated image's quality when compared to the reference.", |
| "In comparison to the reference, what distortion(s) are most prominent in the evaluated image?", |
| "What critical quality degradation(s) are present in the evaluated image versus the reference?", |
| "What distortion(s) are most apparent in the evaluated image relative to the reference?", |
| "What distortion(s) most significantly affect the evaluated image compared to the reference?", |
| "What distortion(s) stand out in the evaluated image against the reference?" |
| ] |
| }, |
| "Non-Reference": { |
| "ONE": [ |
| "Determine the leading ONE degradation in the evaluated image.", |
| "Determine the most impactful ONE distortion in the evaluated image.", |
| "Highlight the most significant ONE distortion in the evaluated image.", |
| "Identify the chief ONE degradation in the evaluated image.", |
| "Identify the most critical ONE distortion in the evaluated image.", |
| "Identify the most notable ONE distortion in the evaluated image's quality.", |
| "In terms of image quality, what is the most glaring ONE issue with the evaluated image?", |
| "In the evaluated image, what ONE distortion is most detrimental to image quality?", |
| "Pinpoint the foremost ONE image quality issue in the evaluated image.", |
| "What ONE distortion is most apparent in the evaluated image?", |
| "What ONE distortion is most evident in the evaluated image?", |
| "What ONE distortion is most prominent in the evaluated image?", |
| "What ONE distortion is most prominent when examining the evaluated image?", |
| "What ONE distortion most detrimentally affects the overall quality of the evaluated image?", |
| "What ONE distortion most notably affects the clarity of the evaluated image?", |
| "What ONE distortion most significantly affects the evaluated image?", |
| "What ONE distortion stands out in the evaluated image?", |
| "What ONE quality degradation is most apparent in the evaluated image?", |
| "What critical ONE quality degradation is present in the evaluated image?", |
| "What is the foremost ONE distortion affecting the evaluated image's quality?", |
| "What is the leading ONE distortion in the evaluated image?", |
| "What is the most critical ONE image quality issue in the evaluated image?", |
| "What is the most severe ONE degradation observed in the evaluated image?", |
| "What is the primary ONE degradation observed in the evaluated image?" |
| ], |
| "TWO": [ |
| "Determine the leading TWO degradations in the evaluated image.", |
| "Determine the most impactful TWO distortions in the evaluated image.", |
| "Highlight the most significant TWO distortions in the evaluated image.", |
| "Identify the chief TWO degradations in the evaluated image.", |
| "Identify the most critical TWO distortions in the evaluated image.", |
| "Identify the most notable TWO distortions in the evaluated image's quality.", |
| "In terms of image quality, what are the most glaring TWO issues with the evaluated image?", |
| "In the evaluated image, what TWO distortions are most detrimental to image quality?", |
| "Pinpoint the foremost TWO image quality issues in the evaluated image.", |
| "What TWO distortions are most apparent in the evaluated image?", |
| "What TWO distortions are most evident in the evaluated image?", |
| "What TWO distortions are most prominent in the evaluated image?", |
| "What TWO distortions are most prominent when examining the evaluated image?", |
| "What TWO distortions most detrimentally affect the overall quality of the evaluated image?", |
| "What TWO distortions most notably affect the clarity of the evaluated image?", |
| "What TWO distortions most significantly affect the evaluated image?", |
| "What TWO distortions stand out in the evaluated image?", |
| "What TWO quality degradations are most apparent in the evaluated image?", |
| "What are the foremost TWO distortions affecting the evaluated image's quality?", |
| "What are the leading TWO distortions in the evaluated image?", |
| "What are the most critical TWO image quality issues in the evaluated image?", |
| "What are the most severe TWO degradations observed in the evaluated image?", |
| "What are the primary TWO degradations observed in the evaluated image?", |
| "What critical TWO quality degradations are present in the evaluated image?", |
| ], |
| "Common": [ |
| "Determine the leading degradation(s) in the evaluated image.", |
| "Determine the most impactful distortion(s) in the evaluated image.", |
| "Highlight the most significant distortion(s) in the evaluated image.", |
| "Identify the chief degradation(s) in the evaluated image.", |
| "Identify the most critical distortion(s) in the evaluated image.", |
| "Identify the most notable distortion(s) in the evaluated image's quality.", |
| "In terms of image quality, what are the most glaring issue(s) with the evaluated image?", |
| "In the evaluated image, what distortion(s) are most detrimental to image quality?", |
| "Pinpoint the foremost image quality issue(s) in the evaluated image.", |
| "What are the foremost distortion(s) affecting the evaluated image's quality?", |
| "What are the leading distortion(s) in the evaluated image?", |
| "What are the most critical image quality issue(s) in the evaluated image?", |
| "What are the most severe degradation(s) observed in the evaluated image?", |
| "What are the primary degradation(s) observed in the evaluated image?", |
| "What critical quality degradation(s) are present in the evaluated image?", |
| "What distortion(s) are most apparent in the evaluated image?", |
| "What distortion(s) are most evident in the evaluated image?", |
| "What distortion(s) are most prominent in the evaluated image?", |
| "What distortion(s) are most prominent when examining the evaluated image?", |
| "What distortion(s) most detrimentally affect the overall quality of the evaluated image?", |
| "What distortion(s) most notably affect the clarity of the evaluated image?", |
| "What distortion(s) most significantly affect the evaluated image?", |
| "What distortion(s) stand out in the evaluated image?", |
| "What quality degradation(s) are most apparent in the evaluated image?" |
| ] |
| } |
| } |
|
|
| def question_generate(ref="Full-Reference", degra="Common"): |
| option = f" Answer the question using a single word or phrase." |
| template = random.choice(question_dict[ref]["Common"] + question_dict[ref][degra]) |
| if random.random() >= 0.4: |
| template += option |
| return template |
|
|
| if __name__ == "__main__": |
| for degradation, degra_dict in dataset_dict.items(): |
| for dname, ddict in degra_dict.items(): |
| for dset, list_path in ddict.items(): |
| meta_refA = [] |
| meta_A = [] |
| meta_syn = [] |
|
|
| |
| paths = [] |
| list_path = os.path.join(base_rt, list_path) |
| with open(list_path) as fin: |
| for line in fin: |
| line = line.strip().split() |
| if len(line) == 3: |
| paths.append(line) |
| paths = sorted(paths) |
|
|
| |
| LQ_list = [] |
| HQ_list = [] |
| for data in paths: |
| lq_pth, hq_pth, label = data |
|
|
| if os.path.isfile(hq_pth): |
| HQ_list.append(hq_pth) |
| image_ref = os.path.relpath(hq_pth, base_rt).replace("\\", "/") |
| id = os.path.basename(image_ref) |
| else: |
| image_ref = None |
|
|
| if os.path.isfile(lq_pth): |
| LQ_list.append(lq_pth) |
| image_A = os.path.relpath(lq_pth, base_rt).replace("\\", "/") |
| id = os.path.basename(image_A) |
| else: |
| image_A = None |
|
|
| if degradation == "Composite": |
| annotation = ", ".join(label.split("_")) |
| else: |
| annotation = degradation |
|
|
| if degradation == "Composite": |
| ref_question = question_generate(ref="Full-Reference", degra="Common") |
| nref_question = question_generate(ref="Non-Reference", degra="Common") |
| else: |
| ref_question = question_generate(ref="Full-Reference", degra="ONE") |
| nref_question = question_generate(ref="Non-Reference", degra="ONE") |
|
|
| meta_refA.append({ |
| "distortion_class": degradation, |
| "distortion_name": degradation, |
| "severity": 3, |
| "id": id, |
| "image_ref": image_ref, |
| "image_A": image_A, |
| "image_B": None, |
| "task_type": "quality_single_A", |
| "conversations": [ |
| { |
| "from": "human", |
| "value": ref_question, |
| }, |
| { |
| "from": "gpt", |
| "value": annotation |
| } |
| ], |
| }) |
|
|
| meta_A.append({ |
| "distortion_class": degradation, |
| "distortion_name": degradation, |
| "severity": 3, |
| "id": id, |
| "image_ref": image_ref, |
| "image_A": image_A, |
| "image_B": None, |
| "task_type": "quality_single_A_noref", |
| "conversations": [ |
| { |
| "from": "human", |
| "value": nref_question, |
| }, |
| { |
| "from": "gpt", |
| "value": annotation |
| } |
| ], |
| }) |
|
|
| meta_syn.append({ |
| "distortion_class": degradation, |
| "distortion_name": degradation, |
| "severity": 3, |
| "id": id, |
| "image_ref": image_ref, |
| "image_A": None, |
| "image_B": None, |
| "task_type": "quality_single_A_noref", |
| "conversations": [ |
| { |
| "from": "human", |
| "value": nref_question, |
| }, |
| { |
| "from": "gpt", |
| "value": annotation |
| } |
| ], |
| }) |
|
|
| if len(LQ_list) > 0 and len(HQ_list) > 0 and len(LQ_list) == len(HQ_list): |
| meta_refA_pth = list_path.replace(".list", "_iqa_refA_brief.json") |
| meta_A_pth = list_path.replace(".list", "_iqa_A_brief.json") |
| with open(meta_refA_pth, "w") as f: |
| json.dump(meta_refA, f, indent=4) |
| with open(meta_A_pth, "w") as f: |
| json.dump(meta_A, f, indent=4) |
| |
| print(f"[{os.path.relpath(meta_refA_pth, base_rt)}, ], # LQ[{len(LQ_list)}], HQ[{len(HQ_list)}], quality_single_A, {degradation}, {dname}-{dset}") |
| print(f"[{os.path.relpath(meta_A_pth, base_rt)}, ], # LQ[{len(LQ_list)}], HQ[{len(HQ_list)}], quality_single_A_noref, {degradation}, {dname}-{dset}") |
| |
| elif len(LQ_list) > 0 and len(HQ_list) == 0: |
| meta_A_pth = list_path.replace(".list", "_iqa_A_brief.json") |
| with open(meta_A_pth, "w") as f: |
| json.dump(meta_A, f, indent=4) |
| print(f"[{os.path.relpath(meta_A_pth, base_rt)}, ], # LQ[{len(LQ_list)}], HQ[{len(HQ_list)}], quality_single_A_noref, {degradation}, {dname}-{dset}") |
| |
| elif len(LQ_list) == 0 and len(HQ_list) > 0: |
| meta_refA_pth = list_path.replace(".list", "_iqa_syn_refA_brief.json") |
| meta_syn_pth = list_path.replace(".list", "_iqa_syn_A_brief.json") |
| with open(meta_refA_pth, "w") as f: |
| json.dump(meta_refA, f, indent=4) |
| with open(meta_syn_pth, "w") as f: |
| json.dump(meta_syn, f, indent=4) |
| print(f"[{os.path.relpath(meta_refA_pth, base_rt)}, ], # LQ[{len(LQ_list)}], HQ[{len(HQ_list)}], quality_single_A, {degradation}, {dname}-{dset}") |
| print(f"[{os.path.relpath(meta_syn_pth, base_rt)}, ], # LQ[{len(LQ_list)}], HQ[{len(HQ_list)}], quality_single_A_noref, {degradation}, {dname}-{dset}") |
| |
| else: |
| raise KeyError(f"the task is not matched, please check the dataset {list_path}") |
| |
|
|
|
|