Official repository of Early Exit or Not: Resource-Efficient Blind Quality Enhancement for Compressed Images, ECCV 2020. [速览]
- A single blind enhancement model for HEVC/JPEG-compressed images with a wide range of Quantization Parameters (QPs) or Quality Factors (QFs).
- A multi-output dynamic network with early-exit mechanism for easy input.
- A Tchebichef-moments based NR-IQA approach for early-exit decision. This IQA approach is highly interpretable and sensitive to blocking energy detection.
Feel free to contact: ryanxingql@gmail.com
.
We have released two versions of the RBQE approach.
-
- Adopts the RAISE data-set (high-quality and large-scale).
- Adopts the HM software for compression and get YUV images.
- Enhances only Y channel and report the Y-PSNR result (in accordance to previous papers).
- Implements the image quality assessment module with MATLAB (convenient for visualization).
- Assesses the Y quality; the IQA threshold is determined according to the Y performance.
-
- Adopts the DIV2K data-set (used by most image restoration approaches).
- Adopts the BPG software for compression (faster, but the result is different to that of the HM) and get PNG images (simpler).
- Enhances RGB channels (more practical).
- Re-implements the MATLAB-based image quality assessment module with Python (no need to use MATLAB anymore; but much, much slower than the MATLAB version).
- Assesses the R quality; the IQA threshold is determined according to the R performance.
We have released the codes of all compared approaches in the latter repository.