Skip to main content

COPEX high rate compression quality metrics

Project description

COPEX High Rate Compression Quality Metrics

This package provides quality metrics for high rate compression.

Installation

pip install COPEX_high_rate_compression_quality_metrics

Library usage

Comparison of Two Multiband TIFF Images via LRSP (L:LPIPS, R:RMSE, S:SSIM, P:PSNR)

the following shows concrete example of use of the library

Steps:

  1. Import necessary libraries
  2. Initialize the model and specify the file paths
  3. Define preprocessing functions
  4. Load the TIFF files
  5. Calculate the metrics individually
  6. Json Builder

1 Library install / import

use "pip install COPEX-high-rate-compression-quality-metrics" to install the library

# Array handler
import numpy as np
# to have a json formated output
import json
import math
# File handler
from skimage import io

# File path handler
import os

# Metrics and utils
import COPEX_high_rate_compression_quality_metrics.metrics as COPEX_metrics
import COPEX_high_rate_compression_quality_metrics.utils as COPEX_utils

2 LPIPS initialization

# LPIPS initialization
loss_fn = COPEX_metrics.initialize_LPIPS()

3 File path definition

# Specify file paths here
file_path1 = os.path.join('T28PGV_20160318T111102_B04_20m.tif')
file_path2 = os.path.join('T28PGV_20160318T111102_B04_20m_ter.tif')

4 File loading

#load images and show shapes
image1 = io.imread(file_path1)
print(file_path1," [shape =",image1.shape,", min =",np.min(image1), ", max =",np.max(image1), ", dtype = ",image1.dtype,"]")
image2 = io.imread(file_path2)
print(file_path2," [shape =",image2.shape,", min =",np.min(image2), ", max =",np.max(image2), ", dtype = ",image2.dtype,"]")


# checking if images have the same shape
if image1.shape != image2.shape:
    raise ValueError("Les deux images doivent avoir les mêmes dimensions.")
print("images loaded with success.")

File visualization (optional)

COPEX_utils.display_multiband_tiffs(image1, image2)

png

5 metrics calculation

# Calculate all metrics
lpips_values,lpips_value = COPEX_metrics.calculate_lpips_multiband(image1, image2,loss_fn)
mean_ssim = COPEX_metrics.calculate_ssim_multiband(image1, image2)
psnr_value = COPEX_metrics.calculate_psnr(image1, image2)
rmse_value = COPEX_metrics.calculate_rmse(image1, image2)

Results interpretation

see VT-P382-SLD-003-E-01-00_COPEX_DCC_PM3_20230630.pdf for more informations about metrics weeknesses

LPIPS : (identical images) 0 <==========> 1 (completely different images) lower is better [very good LPIPS do not mean that images are not totaly different pixel wise]

RMSE : (identical images) 0 <==========> +inf (completely different images) lower is better [different kind of degradations can give the same score, do not capture blurring]

SSIM : (completely different images) -1 <==========> 1 (identical images) higher is better [sensible to little local distorions, sensible to noise differences]

PSNR : (completely different images) 0 <==========> +inf (identical images) higher is better [sensible to Big local differences]

data = {
    "files paths":{
        "file1":file_path1,
        "file2":file_path2
        },
    "metrics":{
        "LPIPS":lpips_value,
        "RMSE":rmse_value,
        "SSIM":mean_ssim,
        "PSNR":str(psnr_value) if math.isinf(psnr_value) else psnr_value     
    }
}
json_data = json.dumps(data, indent=4)

print(json_data)
    {
        "files paths": {
            "file1": "T28PGV_20160318T111102_B04_20m.tif",
            "file2": "T28PGV_20160318T111102_B04_20m_ter.tif"
        },
        "metrics": {
            "LPIPS": 0.038381848484277725,
            "RMSE": 192.01308995822703,
            "SSIM": 0.9817911582274915,
            "PSNR": 26.491058156522357
        }
    }

Json builder

auto_update the bensh algo json file automaticly

1 import library

import COPEX_high_rate_compression_quality_metrics.json_builder as json_builder
import COPEX_high_rate_compression_quality_metrics.metrics as metrics

2 define pathparameters

root_directory = "data"
dataset_name = "RANDOM"
test_case_number = 4
nnvvppp_algoname = "01-01-002_JPEG2000"

3 calculate generics/thematics in any order you want

#json_builder.initialize_json(root_directory=root_directory, dataset_name=dataset_name,test_case_number=test_case_number,nnvvppp_algoname=nnvvppp_algoname)
json_builder.make_generic(root_directory = root_directory,
                          dataset_name = dataset_name,
                          test_case_number = test_case_number,
                          nnvvppp_algoname = nnvvppp_algoname)

json_builder.make_thematic(root_directory,
                           dataset_name,
                           test_case_number,
                           nnvvppp_algoname,
                           thematic.compute_kmeans_score_for_multiband,
                           original_folder_path,
                           decompressed_folder_path,
                           satellite_type)

4 look at results

{
    "original_size": 525312,
    "compressed_size": 48637,
    "compression_factor": 10.8,
    "compression_time": 253,
    "decompression_time": 432,
    "compression_algorithm": "01-01-002_JPEG2000",
    "algorithm_version": "01",
    "compression_parameter": "002",
    "metrics": {
        "LPIPS": {
            "library": "scikit-image",
            "version": "0.24.0",
            "date": "2024-08-19 16:53:07",
            "results": {
                "4c_256_256_random_band_1.tif": 0.15013514459133148,
                "4c_256_256_random_band_2.tif": 0.1589806228876114,
                "4c_256_256_random_band_3.tif": 0.1509121209383011,
                "4c_256_256_random_band_4.tif": 0.1467234492301941
            },
            "average": 0.152,
            "stdev": 0.004
        },
        "SSIM": {
            "library": "scikit-image",
            "version": "0.24.0",
            "date": "2024-08-19 16:53:07",
            "results": {
                "4c_256_256_random_band_1.tif": 0.01048029893613139,
                "4c_256_256_random_band_2.tif": -0.0020971790915714186,
                "4c_256_256_random_band_3.tif": 0.007405245569149331,
                "4c_256_256_random_band_4.tif": 0.005087706587301147
            },
            "average": 0.005,
            "stdev": 0.005
        },
        "PSNR": {
            "library": "scikit-image",
            "version": "0.24.0",
            "date": "2024-08-19 16:53:07",
            "results": {
                "4c_256_256_random_band_1.tif": 7.801028498092282,
                "4c_256_256_random_band_2.tif": 7.75118324229439,
                "4c_256_256_random_band_3.tif": 7.785848197523122,
                "4c_256_256_random_band_4.tif": 7.762412297083275
            },
            "average": 7.775,
            "stdev": 0.019
        },
        "RMSE": {
            "library": "scikit-image",
            "version": "0.24.0",
            "date": "2024-08-19 16:53:07",
            "results": {
                "4c_256_256_random_band_1.tif": 26694.50541651717,
                "4c_256_256_random_band_2.tif": 26847.72648228625,
                "4c_256_256_random_band_3.tif": 26740.79206290665,
                "4c_256_256_random_band_4.tif": 26813.04036306841
            },
            "average": 26774.016,
            "stdev": 59.962
        }
    },
    "kmeans++S2-10-10-42": {
        "library": "scikit-learn",
        "version": "1.5.1",
        "date": "2024-09-11 17:18:17",
        "original bands": [
            "02",
            "03",
            "04",
            "05",
            "06",
            "07",
            "08",
            "11",
            "12"
        ],
        "resampled bands": [
          "05",
          "06",
          "07",
          "11",
          "12"
        ],
        "resampled_bands_factor": 2,
        "metrics": {
            "overall_accuracy": {
                "results": {
                    "S2A_MSIL1C_20200111T105421_N0208_R051_T29NNJ_20200111T123505.kmeans++-10-10-42.tif": 0.6520533690996381
                },
                "average": 0.652,
                "stdev": 0.0
            },
            "kappa_coefficient": {
                "results": {
                    "S2A_MSIL1C_20200111T105421_N0208_R051_T29NNJ_20200111T123505.kmeans++-10-10-42.tif": 0.5610928393084549
                },
                "average": 0.561,
                "stdev": 0.0
            }
        }
    }
}

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

Built Distribution

File details

Details for the file COPEX_high_rate_compression_quality_metrics-0.1.9.tar.gz.

File metadata

File hashes

Hashes for COPEX_high_rate_compression_quality_metrics-0.1.9.tar.gz
Algorithm Hash digest
SHA256 d69c695e3137356ce7f9017b3e7489f1d9db3990c1d385ee7d37fdeb14e86425
MD5 6861b9ce1a9c4d6caacf7657e40570af
BLAKE2b-256 88d9061055a22ce03e329bde0c8adf8d743bcc557d8cb511f51e94503742f02d

See more details on using hashes here.

Provenance

File details

Details for the file COPEX_high_rate_compression_quality_metrics-0.1.9-py3-none-any.whl.

File metadata

File hashes

Hashes for COPEX_high_rate_compression_quality_metrics-0.1.9-py3-none-any.whl
Algorithm Hash digest
SHA256 b42bc34c2206d9d28d90bb849f96741254882fa9a62c93cc9dec06fad4b50caa
MD5 0fae8ff395394c0f79941c600de1e3cf
BLAKE2b-256 a62c7282ffeb1db24083f3aaba20290df49f53a0f8689d4dd289dd734e56445e

See more details on using hashes here.

Provenance

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page