List of participants of MSU SBD 2020

MSU SBD Benchmark 2020

Click on the labels to sort the table.

aysebil

Version: -

Added to the benchmark by: MSU

Parameters:

Links: GitHub

FFmpeg v4.2

Version: v4.2

Added to the benchmark by: MSU

Parameters:

Links: Documentation

johmathe

Version: -

Added to the benchmark by: MSU

Parameters:

Links: GitHub

Max Remain

Version: -

Added to the benchmark by: MSU

Parameters:

Links: GitHub

PyScene v0.5.4

Version: v0.5.4

Added to the benchmark by: MSU

Command: scenedetect -i {input} -o {output} detect-content list-scenes

Links: Documentation

Saeid Dadkhan

Version: -

Added to the benchmark by: MSU

Parameters:

Links: GitHub

VQMT

Version: v1.2

Added to the benchmark by: MSU

Parameters:

Links: Information

NITS-CV-Lab-v1.0

Version: v1.0

Added to the benchmark by: MSU

Parameters:

Links: GitHub

Paper: Singh, Alok, Dalton Meitei Thounaojam, and Saptarshi Chakraborty. "A novel automatic shot boundary detection algorithm: robust to illumination and motion effect." Signal, Image and Video Processing (2019): 1-9. https://doi.org/10.1007/s11760-019-01593-3

28 Dec 2020
See Also
PSNR and SSIM: application areas and critics
Learn about limits and applicability of the most popular metrics
MSU Super-Resolution for Video Compression Benchmark
Learn about the best SR methods for compressed videos and choose the best model to use with your codec
MSU Super-Resolution for Video Compression Benchmark Participants
The list of participants of MSU Super-Resolution for Video Compression Benchmark
MSU Super-Resolution for Video Compression Benchmark Methodology
The evaluation methodology of MSU Super-Resolution for Video Compression Benchmark
MSU Video Super Resolution Benchmark
Discover the newest VSR methods and find the most appropriate method for your tasks
MSU VSR Benchmark Participants
The list of participants of MSU Video Super Resolution Benchmark
Site structure