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Main Authors: Zhao, Rui, Li, Wenrui, Zhu, Lin, Zheng, Yajing, Lin, Weisi
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2601.21933
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author Zhao, Rui
Li, Wenrui
Zhu, Lin
Zheng, Yajing
Lin, Weisi
author_facet Zhao, Rui
Li, Wenrui
Zhu, Lin
Zheng, Yajing
Lin, Weisi
contents Deep visual features are increasingly used as the interface in vision systems, motivating the need to describe feature characteristics and control feature quality for machine perception. Just noticeable difference (JND) characterizes the maximum imperceptible distortion for images under human or machine vision. Extending it to deep visual features naturally meets the above demand by providing a task-aligned tolerance boundary in feature space, offering a practical reference for controlling feature quality under constrained resources. We propose FeatJND, a task-aligned JND formulation that predicts the maximum tolerable per-feature perturbation map while preserving downstream task performance. We propose a FeatJND estimator at standardized split points and validate it across image classification, detection, and instance segmentation. Under matched distortion strength, FeatJND-based distortions consistently preserve higher task performance than unstructured Gaussian perturbations, and attribution visualizations suggest FeatJND can suppress non-critical feature regions. As an application, we further apply FeatJND to token-wise dynamic quantization and show that FeatJND-guided step-size allocation yields clear gains over random step-size permutation and global uniform step size under the same noise budget. Our code will be released after publication.
format Preprint
id arxiv_https___arxiv_org_abs_2601_21933
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Just Noticeable Difference Modeling for Deep Visual Features
Zhao, Rui
Li, Wenrui
Zhu, Lin
Zheng, Yajing
Lin, Weisi
Computer Vision and Pattern Recognition
Deep visual features are increasingly used as the interface in vision systems, motivating the need to describe feature characteristics and control feature quality for machine perception. Just noticeable difference (JND) characterizes the maximum imperceptible distortion for images under human or machine vision. Extending it to deep visual features naturally meets the above demand by providing a task-aligned tolerance boundary in feature space, offering a practical reference for controlling feature quality under constrained resources. We propose FeatJND, a task-aligned JND formulation that predicts the maximum tolerable per-feature perturbation map while preserving downstream task performance. We propose a FeatJND estimator at standardized split points and validate it across image classification, detection, and instance segmentation. Under matched distortion strength, FeatJND-based distortions consistently preserve higher task performance than unstructured Gaussian perturbations, and attribution visualizations suggest FeatJND can suppress non-critical feature regions. As an application, we further apply FeatJND to token-wise dynamic quantization and show that FeatJND-guided step-size allocation yields clear gains over random step-size permutation and global uniform step size under the same noise budget. Our code will be released after publication.
title Just Noticeable Difference Modeling for Deep Visual Features
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2601.21933