Tracking and data association
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IEEE Transactions on Knowledge and Data Engineering
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Proceedings of the international conference on Multimedia
A Data Association Algorithm for People Re-identification in Photo Sequences
ISM '10 Proceedings of the 2010 IEEE International Symposium on Multimedia
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Probabilistic Models for Inference about Identity
IEEE Transactions on Pattern Analysis and Machine Intelligence
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Due to the widespread use of cameras, it is very common to collect thousands of personal photos. A proper organization is needed to make the collection usable and to enable an easy photo retrieval. In this paper, we present a method to organize personal photo collections based on ''who'' is in the picture. Our method consists in detecting the faces in the photo sequence and arranging them in groups corresponding to the probable identities. This problem can be conveniently modeled as a multi-target visual tracking where a set of on-line trained classifiers is used to represent the identity models. In contrast to other works where clustering methods are used, our method relies on a probabilistic framework; it does not require any prior information about the number of different identities in the photo album. To enable future comparison, we present experimental results on a public dataset and on a photo collection generated from a public face dataset.