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Main Authors: Hu, Xiaobin, Zuo, Enpu, Hu, Lanping, Yang, Kaiwen, Liao, Dianshu, Zhang, Tianyi, Yin, Bo, Zhou, Yinsi, Pan, Shidong, Sun, Xiaoyu
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.10229
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author Hu, Xiaobin
Zuo, Enpu
Hu, Lanping
Yang, Kaiwen
Liao, Dianshu
Zhang, Tianyi
Yin, Bo
Zhou, Yinsi
Pan, Shidong
Sun, Xiaoyu
author_facet Hu, Xiaobin
Zuo, Enpu
Hu, Lanping
Yang, Kaiwen
Liao, Dianshu
Zhang, Tianyi
Yin, Bo
Zhou, Yinsi
Pan, Shidong
Sun, Xiaoyu
contents Privacy protection has become a critical requirement in the era of ubiquitous visual data sharing, imposing higher demands on efficient and robust privacy detection algorithms. However, current robust detection models are severely hindered by the lack of comprehensive datasets. Existing privacy-oriented datasets often suffer from limited scale, coarse-grained annotations, and narrow domain coverage, failing to capture the intricate details of sensitive information in realworld environments. To bridge this gap, we present a large-scale, fine-grained Visual Privacy Dataset (VPD-100K), designed to facilitate generalized privacy detection. We establish a holistic taxonomy comprising four primary domains: Human Presence, On-Screen Personally Identifiable Information (PII), Physical Identifiers, and Location Indicators, containing 100,000 images annotated with 33 fine-grained classes and over 190,000 object instances. Statistical analysis reveals that our dataset features long-tailed distributions, small object scales, and high visual complexity. These characteristics make the dataset particularly valuable for demanding, unconstrained applications such as live streaming, where actors frequently face unintentional, realtime information leakage. Furthermore, we design an effective frequency-enhanced lightweight module consisting of frequency-domain attention fusion and adaptive spectral gating mechanism that breaks the limitations of spatial pixel intensity to better capture the subtle details of sensitive information. Extensive experiments conducted on both diverse image and streaming videos benchmarks consistently demonstrate the effectiveness of our VPD-100K dataset and the wellcurated frequency mechanism. The code and dataset are available at https://vpd-100k.github.io/.
format Preprint
id arxiv_https___arxiv_org_abs_2605_10229
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle VPD-100K: Towards Generalizable and Fine-grained Visual Privacy Protection
Hu, Xiaobin
Zuo, Enpu
Hu, Lanping
Yang, Kaiwen
Liao, Dianshu
Zhang, Tianyi
Yin, Bo
Zhou, Yinsi
Pan, Shidong
Sun, Xiaoyu
Computer Vision and Pattern Recognition
Computers and Society
Privacy protection has become a critical requirement in the era of ubiquitous visual data sharing, imposing higher demands on efficient and robust privacy detection algorithms. However, current robust detection models are severely hindered by the lack of comprehensive datasets. Existing privacy-oriented datasets often suffer from limited scale, coarse-grained annotations, and narrow domain coverage, failing to capture the intricate details of sensitive information in realworld environments. To bridge this gap, we present a large-scale, fine-grained Visual Privacy Dataset (VPD-100K), designed to facilitate generalized privacy detection. We establish a holistic taxonomy comprising four primary domains: Human Presence, On-Screen Personally Identifiable Information (PII), Physical Identifiers, and Location Indicators, containing 100,000 images annotated with 33 fine-grained classes and over 190,000 object instances. Statistical analysis reveals that our dataset features long-tailed distributions, small object scales, and high visual complexity. These characteristics make the dataset particularly valuable for demanding, unconstrained applications such as live streaming, where actors frequently face unintentional, realtime information leakage. Furthermore, we design an effective frequency-enhanced lightweight module consisting of frequency-domain attention fusion and adaptive spectral gating mechanism that breaks the limitations of spatial pixel intensity to better capture the subtle details of sensitive information. Extensive experiments conducted on both diverse image and streaming videos benchmarks consistently demonstrate the effectiveness of our VPD-100K dataset and the wellcurated frequency mechanism. The code and dataset are available at https://vpd-100k.github.io/.
title VPD-100K: Towards Generalizable and Fine-grained Visual Privacy Protection
topic Computer Vision and Pattern Recognition
Computers and Society
url https://arxiv.org/abs/2605.10229