User studies reveal preferences for visual abstractions and distance-dependent low-resolution capture, leading to a configurable privacy policy for robot navigation.
Privacy-Preserving Semantic Segmentation from Ultra-Low-Resolution RGB Inputs
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abstract
RGB-based semantic segmentation has become a mainstream approach for visual perception and is widely applied in a variety of downstream tasks. However, existing methods typically rely on high-resolution RGB inputs, which may expose sensitive visual content in privacy-critical environments. Ultra-low-resolution RGB sensing suppresses sensitive information directly during image acquisition, making it an attractive privacy-preserving alternative. Nevertheless, recovering semantic segmentation from ultra-low-resolution RGB inputs remains highly challenging due to severe visual degradation. In this work, we introduce a novel fully joint-learning framework to mitigate the optimization conflicts exacerbated by visual degradation for ultra-low-resolution semantic segmentation. Experiments demonstrate that our method outperforms representative baselines in semantic segmentation performance and our ultra-low-resolution RGB input achieves a favorable trade-off between privacy preservation and semantic segmentation performance. We deploy our privacy-preserving semantic segmentation method in a real-world robotic object-goal navigation task, demonstrating successful downstream task execution even under severe visual degradation.
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cs.RO 1years
2026 1verdicts
UNVERDICTED 1representative citing papers
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Designing Privacy-Preserving Visual Perception for Robot Navigation Based on User Privacy Preferences
User studies reveal preferences for visual abstractions and distance-dependent low-resolution capture, leading to a configurable privacy policy for robot navigation.