
LINQS
STATISTICAL RELATIONAL LEARNING GROUP @ UMD
Active Inference for Retrieval in Camera Networks
We address the problem of searching camera network videos to retrieve
frames containing specified individuals. We show the benefit of
utilizing a learned probabilistic model that captures dependencies
among the cameras. In addition, we develop an active inference framework
that can request human input at inference time, directing human
attention to the portions of the videos whose correct annotation would
provide the biggest performance improvements. Our primary contribution
is to show that by mapping video frames in a camera network onto a
graphical model, we can apply collective classification and active
inference algorithms to significantly increase the performance of the
retrieval system, while minimizing the number of human annotations
required.
BibTex references
@InProceedings{chen:wpov11,
author = "Chen, Daozheng and Bilgic, Mustafa and Getoor, Lise and Jacobs, David and Mihalkova, Lilyana and Yeh, Tom",
title = "Active Inference for Retrieval in Camera Networks",
booktitle = "Workshop on Person Oriented Vision",
year = "2011",
}
![chen-wpov11.pdf [1.5Mo]](/basilic/web/Publications/images/pdf.png)

