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Hierarchical, Multi-resolution Models for Object Recognition: Applications to Mammographic Computer-aided Diagnosis
Washington, D.C. October 16-October 18
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/AIPRW.2000.95362029th Applied Imagery Pattern Recognit ...
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Paul Sajda, Columbia University New York, NY
Clay Spence, Sarnoff Corporation Princeton, NJ
Lucas Parra, Sarnoff Corporation Princeton, NJ
Robert Nishikawa, The University of Chicago, Chicago, IL
A fundamental problem in image analysis is the integration of information across scale to detect and classify objects. We have developed, within a machine learning framework, two classes of multi-resolution models for integrating scale information for object detection and classification- -a discriminative model called the hierarchical pyramid neural network (HPNN) and a generative model called a hierarchical image probability (HIP) model. Using receiver operating characteristic (ROC) analysis, we show that these models can significantly reduce the false positive rates for a well-established computer-aided diagnosis (CAD) system.
Citation:
Paul Sajda, Clay Spence, Lucas Parra, Robert Nishikawa, "Hierarchical, Multi-resolution Models for Object Recognition: Applications to Mammographic Computer-aided Diagnosis," aipr, pp.159, 29th Applied Imagery Pattern Recognition Workshop (AIPR'00), 2000
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