PrivAR applies VLMs with chain-of-thought prompting to detect and mitigate semantic privacy risks in AR, reporting 81.48% accuracy and 17.58% leakage rate on a real-world dataset.
V erifiable access control for augmented reality localization and mapping
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See No Evil: Semantic Context-Aware Privacy Risk Detection for AR
PrivAR applies VLMs with chain-of-thought prompting to detect and mitigate semantic privacy risks in AR, reporting 81.48% accuracy and 17.58% leakage rate on a real-world dataset.