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An efficient Naive Bayes approach to category-level object detection

Kasim Terzić, J. M. H. du Buf

Year
2014
Citations
5

Abstract

We present a fast Bayesian algorithm for category-level object detection in natural images. We modify the popular Naive Bayes Nearest Neighbour classification algorithm to make it suitable for evaluating multiple sub-regions in an image, and offer a fast, filtering-based alternative to the multi-scale sliding window approach. Our algorithm is example-based and requires no learning. Tests on standard datasets and robotic scenarios show competitive detection rates and real-time performance of our algorithm.

Keywords

Naive Bayes classifierComputer scienceArtificial intelligenceObject detectionBayes' theoremObject (grammar)Pattern recognition (psychology)Sliding window protocolMachine learningBayesian probability

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