On-Line Random Naive Bayes for Tracking

Randomized learning methods (i.e., Forests or Ferns) have shown excellent capabilities for various computer vision applications. However, it was shown that the tree structure in Forests can be replaced by even simpler structures, e.g., Random Naive Bayes classifiers, yielding similar performance. Th...

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Hauptverfasser: Godec, M, Leistner, C, Saffari, A, Bischof, H
Format: Tagungsbericht
Sprache:eng
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Zusammenfassung:Randomized learning methods (i.e., Forests or Ferns) have shown excellent capabilities for various computer vision applications. However, it was shown that the tree structure in Forests can be replaced by even simpler structures, e.g., Random Naive Bayes classifiers, yielding similar performance. The goal of this paper is to benefit from these findings to develop an efficient on-line learner. Based on the principals of on-line Random Forests, we adapt the Random Naive Bayes classifier to the on-line domain. For that purpose, we propose to use on-line histograms as weak learners, which yield much better performance than simple decision stumps. Experimentally we show, that the approach is applicable to incremental learning on machine learning datasets. Additionally, we propose to use an IIR filtering-like forgetting function for the weak learners to enable adaptivity and evaluate our classifier on the task of tracking by detection.
ISSN:1051-4651
2831-7475
DOI:10.1109/ICPR.2010.865