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Does Image Anonymization Impact Computer Vision Training?

Håkon Hukkelås, Frank Lindseth

202324 citationsDOI

Abstract

Image anonymization is widely adapted in practice to comply with privacy regulations in many regions. However, anonymization often degrades the quality of the data, reducing its utility for computer vision development. In this paper, we investigate the impact of image anonymization for training computer vision models on key computer vision tasks (detection, instance segmentation, and pose estimation). Specifically, we benchmark the recognition drop on common detection datasets, where we evaluate both traditional and realistic anonymization for faces and full bodies. Our comprehensive experiments reflect that traditional image anonymization substantially impacts final model performance, particularly when anonymizing the full body. Furthermore, we find that realistic anonymization can mitigate this decrease in performance, where our experiments reflect a minimal performance drop for face anonymization. Our study demonstrates that realistic anonymization can enable privacy-preserving computer vision development with minimal performance degradation across a range of important computer vision benchmarks.

Topics & Concepts

Computer scienceArtificial intelligenceBenchmark (surveying)Computer visionSegmentationFace (sociological concept)Facial recognition systemImage (mathematics)Data miningPattern recognition (psychology)SociologyGeographySocial scienceGeodesyPrivacy-Preserving Technologies in DataFace recognition and analysisAdvanced Neural Network Applications
Does Image Anonymization Impact Computer Vision Training? | Litcius