Calculate quality metrics with FFmpeg (SSIM, PSNR, VMAF)
Project description
FFmpeg Quality Metrics
Simple script for calculating quality metrics with FFmpeg.
Currently supports PSNR, SSIM and VMAF. It will output:
- the per-frame metrics
- metrics for each component (Y, U, V)
- global statistics (min/max/average/standard deviation)
Author: Werner Robitza werner.robitza@gmail.com
Contents:
Requirements
- Python 3.6 or higher
- FFmpeg:
Put the ffmpeg
executable in your $PATH
.
FFmpeg can be installed using Homebrew, but it is recommended that you use one of the FFmpeg builds linked above, otherwise libvmaf <v2.0.0 will be used, which is ~2x slower (source).
Installation
pip3 install ffmpeg_quality_metrics
Or clone this repository, then run the tool with python3 -m ffmpeg_quality_metrics
Usage
In the simplest case, if you have a distorted (encoded, maybe scaled) version and the reference:
ffmpeg_quality_metrics distorted.mp4 reference.avi
The distorted file will be automatically scaled to the resolution of the reference.
Metrics
The following metrics are available:
Metric | Description | Scale | Calculated by default? |
---|---|---|---|
PSNR | Peak Signal to Noise Ratio | dB | ✔️ |
SSIM | Structural Similarity | 0-100 (higher is better) | ✔️ |
VMAF | Video Multi-Method Assessment Fusion | 0-100 (higher is better) | No, use --enable-vmaf |
Extended Options
You can configure additional options related to scaling, speed etc.
See ffmpeg_quality_metrics -h
:
usage: ffmpeg_quality_metrics [-h] [-n] [-v] [-dp]
[-s {fast_bilinear,bilinear,bicubic,experimental,neighbor,area,bicublin,gauss,sinc,lanczos,spline}] [-r FRAMERATE]
[-t THREADS] [-of {json,csv}] [-ev] [-m MODEL_PATH] [-p] [-nt N_THREADS]
dist ref
positional arguments:
dist input file, distorted
ref input file, reference
optional arguments:
-h, --help show this help message and exit
General options:
-n, --dry-run Do not run commands, just show what would be done (default: False)
-v, --verbose Show verbose output (default: False)
-pr, --progress Show a progress bar (default: False)
FFmpeg options:
-dp, --disable-psnr-ssim
Disable PSNR/SSIM computation. Use VMAF to get YUV estimate. (default: False)
-s {fast_bilinear,bilinear,bicubic,experimental,neighbor,area,bicublin,gauss,sinc,lanczos,spline}, --scaling-algorithm {fast_bilinear,bilinear,bicubic,experimental,neighbor,area,bicublin,gauss,sinc,lanczos,spline}
Scaling algorithm for ffmpeg (default: bicubic)
-r FRAMERATE, --framerate FRAMERATE
Force an input framerate (default: None)
-t THREADS, --threads THREADS
Number of threads to do the calculations (default: 0)
Output options:
-of {json,csv}, --output-format {json,csv}
Output format for the metrics (default: json)
VMAF options:
-ev, --enable-vmaf Enable VMAF computation; calculates VMAF as well as SSIM and PSNR (default: False)
-m MODEL_PATH, --model-path MODEL_PATH
Use a specific VMAF model file. If none is chosen, picks a default model. You can also specify one of the
following built-in models: ['vmaf_v0.6.1.json', 'vmaf_4k_v0.6.1.json', 'vmaf_v0.6.1neg.json'] (default: vmaf_v0.6.1.json)
-p, --phone-model Enable VMAF phone model (default: False)
-nt N_THREADS, --n-threads N_THREADS
Set the value of libvmaf's n_threads option. This determines the number of threads that are used for VMAF
calculation (default: number of CPUs)
Specifying VMAF Model
Use the -m/--model-path
option to set the path to a different VMAF model file.
This program supplies the following models:
vmaf_4k_v0.6.1.json
vmaf_v0.6.1.json
vmaf_v0.6.1neg.json
Use the 4k
version if you have a 4K reference sample. The neg
version is explained here.
You can either specify an absolute path to an existing model, e.g.:
/usr/local/opt/libvmaf/share/model/vmaf_v0.6.1neg.json
Or pass the file name to the built-in model. So both of these are equivalent:
ffmpeg_quality_metrics dist.mkv ref.mkv -m vmaf_v0.6.1neg.json
ffmpeg_quality_metrics dist.mkv ref.mkv -m /usr/local/opt/libvmaf/share/model/vmaf_v0.6.1neg.json
Running with Docker
If you don't want to deal with dependencies, build the image with Docker:
docker build -t ffmpeg_quality_metrics .
This takes a few minutes and installs the latest ffmpeg
as a static build with libvmaf 2.x.
You can then run the container, which basically calls the Python script. To help you with mounting the volumes (since your videos are not stored in the container), you can run a helper script:
./docker_run.sh <dist> <ref> [OPTIONS]
Check the output of ./docker_run.sh
for more help.
For example, to run the tool with the bundled test videos and enable VMAF calculation:
./docker_run.sh test/dist-854x480.mkv test/ref-1280x720.mkv -ev
For Homebrew ffmpeg, a Dockerfile-legacy
is provided.
Output
This tool supports JSON or CSV output, including individual fields for Y, U, V, and global statistics, as well as frame numbers (n
).
JSON example:
➜ ffmpeg_quality_metrics test/dist-854x480.mkv test/ref-1280x720.mkv --enable-vmaf
{
"ssim": [
{
"n": 1,
"ssim_y": 0.934,
"ssim_u": 0.96,
"ssim_v": 0.942,
"ssim_avg": 0.945
},
{
"n": 2,
"ssim_y": 0.934,
"ssim_u": 0.96,
"ssim_v": 0.943,
"ssim_avg": 0.946
},
{
"n": 3,
"ssim_y": 0.934,
"ssim_u": 0.959,
"ssim_v": 0.943,
"ssim_avg": 0.945
}
],
"psnr": [
{
"n": 1,
"mse_avg": 536.71,
"mse_y": 900.22,
"mse_u": 234.48,
"mse_v": 475.43,
"psnr_avg": 20.83,
"psnr_y": 18.59,
"psnr_u": 24.43,
"psnr_v": 21.36
},
{
"n": 2,
"mse_avg": 535.29,
"mse_y": 896.98,
"mse_u": 239.4,
"mse_v": 469.49,
"psnr_avg": 20.84,
"psnr_y": 18.6,
"psnr_u": 24.34,
"psnr_v": 21.41
},
{
"n": 3,
"mse_avg": 535.04,
"mse_y": 894.89,
"mse_u": 245.8,
"mse_v": 464.43,
"psnr_avg": 20.85,
"psnr_y": 18.61,
"psnr_u": 24.22,
"psnr_v": 21.46
}
],
"vmaf": [
{
"psnr": 18.587308,
"integer_motion2": 0.0,
"integer_motion": 0.0,
"integer_adm2": 0.69907,
"integer_adm_scale0": 0.708183,
"integer_adm_scale1": 0.733469,
"integer_adm_scale2": 0.718624,
"integer_adm_scale3": 0.67301,
"ssim": 0.925976,
"integer_vif_scale0": 0.539591,
"integer_vif_scale1": 0.718022,
"integer_vif_scale2": 0.751875,
"integer_vif_scale3": 0.773503,
"ms_ssim": 0.898265,
"vmaf": 14.054853,
"n": 1
},
{
"psnr": 18.60299,
"integer_motion2": 0.359752,
"integer_motion": 0.368929,
"integer_adm2": 0.698451,
"integer_adm_scale0": 0.706706,
"integer_adm_scale1": 0.73203,
"integer_adm_scale2": 0.718262,
"integer_adm_scale3": 0.672766,
"ssim": 0.926521,
"integer_vif_scale0": 0.540231,
"integer_vif_scale1": 0.719566,
"integer_vif_scale2": 0.753567,
"integer_vif_scale3": 0.775864,
"ms_ssim": 0.899353,
"vmaf": 14.464182,
"n": 2
},
{
"psnr": 18.613101,
"integer_motion2": 0.359752,
"integer_motion": 0.359752,
"integer_adm2": 0.697126,
"integer_adm_scale0": 0.706542,
"integer_adm_scale1": 0.731351,
"integer_adm_scale2": 0.716454,
"integer_adm_scale3": 0.671197,
"ssim": 0.926481,
"integer_vif_scale0": 0.539091,
"integer_vif_scale1": 0.718657,
"integer_vif_scale2": 0.753306,
"integer_vif_scale3": 0.775984,
"ms_ssim": 0.900086,
"vmaf": 14.256442,
"n": 3
}
],
"global": {
"ssim": {
"average": 0.945,
"median": 0.945,
"stdev": 0.0,
"min": 0.945,
"max": 0.946
},
"psnr": {
"average": 20.84,
"median": 20.84,
"stdev": 0.008,
"min": 20.83,
"max": 20.85
},
"vmaf": {
"average": 14.258,
"median": 14.256,
"stdev": 0.167,
"min": 14.055,
"max": 14.464
}
},
"input_file_dist": "test/dist-854x480.mkv",
"input_file_ref": "test/ref-1280x720.mkv"
}
CSV example:
➜ ffmpeg_quality_metrics test/dist-854x480.mkv test/ref-1280x720.mkv --enable-vmaf -of csv
n,adm2,motion2,ms_ssim,psnr,ssim,vif_scale0,vif_scale1,vif_scale2,vif_scale3,vmaf,mse_avg,mse_u,mse_v,mse_y,psnr_avg,psnr_u,psnr_v,psnr_y,ssim_avg,ssim_u,ssim_v,ssim_y,input_file_dist,input_file_ref
1,0.70704,0.0,0.89698,18.58731,0.92415,0.53962,0.71805,0.75205,0.77367,15.44212,536.71,234.48,475.43,900.22,20.83,24.43,21.36,18.59,0.945,0.96,0.942,0.934,test/dist-854x480.mkv,test/ref-1280x720.mkv
2,0.7064,0.35975,0.89806,18.60299,0.9247,0.54025,0.71961,0.75369,0.77607,15.85038,535.29,239.4,469.49,896.98,20.84,24.34,21.41,18.6,0.946,0.96,0.943,0.934,test/dist-854x480.mkv,test/ref-1280x720.mkv
3,0.70505,0.35975,0.89879,18.6131,0.92466,0.5391,0.71869,0.75344,0.77616,15.63546,535.04,245.8,464.43,894.89,20.85,24.22,21.46,18.61,0.945,0.959,0.943,0.934,test/dist-854x480.mkv,test/ref-1280x720.mkv
API
The program exposes an API that you can use yourself:
from ffmpeg_quality_metrics import FfmpegQualityMetrics as ffqm
ffqm("path/to/ref", "path/to/dist").calc(["ssim", "psnr"])
For more usage please read the docs.
License
ffmpeg_quality_metrics, Copyright (c) 2019-2021 Werner Robitza
Permission is hereby granted, free of charge, to any person obtaining a copy of this software and associated documentation files (the "Software"), to deal in the Software without restriction, including without limitation the rights to use, copy, modify, merge, publish, distribute, sublicense, and/or sell copies of the Software, and to permit persons to whom the Software is furnished to do so, subject to the following conditions:
The above copyright notice and this permission notice shall be included in all copies or substantial portions of the Software.
THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND, EXPRESS OR IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF MERCHANTABILITY, FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT. IN NO EVENT SHALL THE AUTHORS OR COPYRIGHT HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR OTHER LIABILITY, WHETHER IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, ARISING FROM, OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN THE SOFTWARE.
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