Authors

* External authors

Venue

Date

Share

Image Intrinsic Scale Assessment: Bridging the Gap Between Quality and Resolution

Vlad Hosu

Lorenzo Agnolucci

Daisuke Iso

Dietmar Saupe*

* External authors

ICCV-25

2025

Abstract

Image Quality Assessment (IQA) measures and predicts perceived image quality by human observers. Although recent studies have highlighted the critical influence that variations in the scale of an image have on its perceived quality, this relationship has not been systematically quantified. To bridge this gap, we introduce the Image Intrinsic Scale (IIS), defined as the largest scale where an image exhibits its highest perceived quality. We also present the Image Intrinsic Scale Assessment (IISA) task, which involves subjectively measuring and predicting the IIS based on human judgments. We develop a subjective annotation methodology and create the IISA-DB dataset, comprising 785 image-IIS pairs annotated by experts in a rigorously controlled crowdsourcing study with verified reliability. Furthermore, we propose WIISA (Weak-labeling for Image Intrinsic Scale Assessment), a strategy that leverages how the IIS of an image varies with downscaling to generate weak labels. Experiments show that applying WIISA during the training of several IQA methods adapted for IISA consistently improves the performance compared to using only ground-truth labels. We will release the code, dataset, and pre-trained models upon acceptance.

Related Publications

Beyond RGB: Adaptive Parallel Processing for RAW Object Detection

ICCV, 2025
Shani Gamrian, Hila Barel, Feiran Li, Masakazu Yoshimura*, Daisuke Iso

Object detection models are typically applied to standard RGB images processed through Image Signal Processing (ISP) pipelines, which are designed to enhance sensor-captured RAW images for human vision. However, these ISP functions can lead to a loss of critical information …

ReRAW: RGB-to-RAW Image Reconstruction via Stratified Sampling for Efficient Object Detection on the Edge

CVPR, 2025
Radu Berdan, Beril Besbinar, Christoph Reinders, Junji Otsuka*, Daisuke Iso

Edge-based computer vision models running on compact, resource-limited devices benefit greatly from using unprocessed, detail-rich RAW sensor data instead of processed RGB images. Training these models, however, necessitates large labeled RAW datasets, which are costly and o…

Noise Modeling in One Hour: Minimizing Preparation Efforts for Self-supervised Low-Light RAW Image Denoising

CVPR, 2025
Feiran Li, Haiyang Jiang, Daisuke Iso

Noise synthesis is a promising solution for addressing the data shortage problem in data-driven low-light RAW image denoising. However, accurate noise synthesis methods often necessitate labor-intensive calibration and profiling procedures during preparation, preventing them…

  • HOME
  • Publications
  • Image Intrinsic Scale Assessment: Bridging the Gap Between Quality and Resolution

JOIN US

Shape the Future of AI with Sony AI

We want to hear from those of you who have a strong desire
to shape the future of AI.