Katsuhiro Honda, Masahiro Omori, S. Ubukata, A. Notsu
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A study on fuzzy clustering-based k-anonymization for privacy preserving crowd movement analysis with face recognition
k-anonymization is a basic technique for privacy preserving data analysis of personal information. This paper studies the applicability of a fuzzy clustering-based anonymization approach to crowd movement analysis, in which each individual movement is captured through face recognition in camera images. Before utilizing each face feature values, k-anonymization is performed by coding cluster elements, which are extracted by fuzzy k-member clustering. In an experimental study, the advantage and availability of fuzzy partitions are investigated through comparisons of reproduction qualities and anonymization costs with several fuzzy degree settings.