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Main Authors: Song, Huan, Tian, Shuyu, Long, Ting, Liu, Jiang, Yuan, Cheng, Jia, Zhenyu, Shao, Jiawei, Li, Xuelong
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2603.04775
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author Song, Huan
Tian, Shuyu
Long, Ting
Liu, Jiang
Yuan, Cheng
Jia, Zhenyu
Shao, Jiawei
Li, Xuelong
author_facet Song, Huan
Tian, Shuyu
Long, Ting
Liu, Jiang
Yuan, Cheng
Jia, Zhenyu
Shao, Jiawei
Li, Xuelong
contents With the increasing deployment of intelligent sensing technologies in highly sensitive environments such as restrooms and locker rooms, visual surveillance systems face a profound privacy-security paradox. Existing privacy-preserving approaches, including physical desensitization, encryption, and obfuscation, often compromise semantic understanding or fail to ensure mathematically provable irreversibility. Although Privacy Camera 1.0 eliminated visual data at the source to prevent leakage, it provided only textual judgments, leading to evidentiary blind spots in disputes. To address these limitations, this paper proposes a novel privacy-preserving perception framework based on the AI Flow paradigm and a collaborative edge-cloud architecture. By deploying a visual desensitizer at the edge, raw images are transformed in real time into abstract feature vectors through nonlinear mapping and stochastic noise injection under the Information Bottleneck principle, ensuring identity-sensitive information is stripped and original images are mathematically unreconstructable. The abstract representations are transmitted to the cloud for behavior recognition and semantic reconstruction via a "dynamic contour" visual language, achieving a critical balance between perception and privacy while enabling illustrative visual reference without exposing raw images.
format Preprint
id arxiv_https___arxiv_org_abs_2603_04775
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Privacy-Aware Camera 2.0 Technical Report
Song, Huan
Tian, Shuyu
Long, Ting
Liu, Jiang
Yuan, Cheng
Jia, Zhenyu
Shao, Jiawei
Li, Xuelong
Computer Vision and Pattern Recognition
Computation and Language
With the increasing deployment of intelligent sensing technologies in highly sensitive environments such as restrooms and locker rooms, visual surveillance systems face a profound privacy-security paradox. Existing privacy-preserving approaches, including physical desensitization, encryption, and obfuscation, often compromise semantic understanding or fail to ensure mathematically provable irreversibility. Although Privacy Camera 1.0 eliminated visual data at the source to prevent leakage, it provided only textual judgments, leading to evidentiary blind spots in disputes. To address these limitations, this paper proposes a novel privacy-preserving perception framework based on the AI Flow paradigm and a collaborative edge-cloud architecture. By deploying a visual desensitizer at the edge, raw images are transformed in real time into abstract feature vectors through nonlinear mapping and stochastic noise injection under the Information Bottleneck principle, ensuring identity-sensitive information is stripped and original images are mathematically unreconstructable. The abstract representations are transmitted to the cloud for behavior recognition and semantic reconstruction via a "dynamic contour" visual language, achieving a critical balance between perception and privacy while enabling illustrative visual reference without exposing raw images.
title Privacy-Aware Camera 2.0 Technical Report
topic Computer Vision and Pattern Recognition
Computation and Language
url https://arxiv.org/abs/2603.04775