Attribute-based people search in surveillance environments
Daniel A. Vaquero, Rogerio S. Feris, et al.
WACV 2009
In many real applications that use and analyze networked data, the links in the network graph may be erroneous, or derived from probabilistic techniques. In such cases, the node classification problem can be challenging, since the unreliability of the links may affect the final results of the classification process. In this paper, we focus on situations that require the analysis of the uncertainty that is present in the graph structure. We study the novel problem of node classification in uncertain graphs, by treating uncertainty as a first-class citizen. We propose two techniques based on a Bayes model, and show the benefits of incorporating uncertainty in the classification process as a first-class citizen. The experimental results demonstrate the effectiveness of our approaches. © Copyright 2014 ACM 978-1-4503-2722-0/14/ 06⋯$15.00.
Daniel A. Vaquero, Rogerio S. Feris, et al.
WACV 2009
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CVPR 2025
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ICPR 2012
Sudeep Sarkar, Kim L. Boyer
Computer Vision and Image Understanding