Comparing Local Feature Descriptors in pLSA-Based Image Models
Source:
30th Annual Symposium of the German Association for Pattern Recognition (DAGM), Springer Verlag, Volume 5096, Munich, Germany, p.446–455 (2008)
Abstract:
Probabilistic models with hidden variables such as probabilistic Latent Semantic Analysis (pLSA) and Latent Dirichlet Allocation
(LDA) have recently become popular for solving several image content
analysis tasks. In this work we will use a pLSA model to represent images
for performing scene classification. We evaluate the influence of the type
of local feature descriptor in this context and compare three different
descriptors. Moreover we also examine three different local interest region detectors with respect to their suitability for this task. Our results
show that two examined local descriptors, the geometric blur and the
self-similarity feature, outperform the commonly used SIFT descriptor
by a large margin.
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