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Tools for Protecting the Privacy of Specific Individuals in Video
EURASIP Journal on Advances in Signal Processing volume 2007, Article number: 075427 (2007)
Abstract
This paper presents a system for protecting the privacy of specific individuals in video recordings. We address the following two problems: automatic people identification with limited labeled data, and human body obscuring with preserved structure and motion information. In order to address the first problem, we propose a new discriminative learning algorithm to improve people identification accuracy using limited training data labeled from the original video and imperfect pairwise constraints labeled from face obscured video data. We employ a robust face detection and tracking algorithm to obscure human faces in the video. Our experiments in a nursing home environment show that the system can obtain a high accuracy of people identification using limited labeled data and noisy pairwise constraints. The study result indicates that human subjects can perform reasonably well in labeling pairwise constraints with the face masked data. For the second problem, we propose a novel method of body obscuring, which removes the appearance information of the people while preserving rich structure and motion information. The proposed approach provides a way to minimize the risk of exposing the identities of the protected people while maximizing the use of the captured data for activity/behavior analysis.
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Chen, D., Chang, Y., Yan, R. et al. Tools for Protecting the Privacy of Specific Individuals in Video. EURASIP J. Adv. Signal Process. 2007, 075427 (2007). https://doi.org/10.1155/2007/75427
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DOI: https://doi.org/10.1155/2007/75427