A weight adjustment strategy to prevent cascade of boosted classifiers from overfitting
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Date issued
2015
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Václav Skala - UNION Agency
Abstract
We propose a weight adjustment strategy to prevent a cascade of boosted classifiers from overfitting and to achieve
an improved performance. In cascade learning, overfitting often occurs due to the iterative applications of
bootstrapping. Since false positives that the previous classifier misclassifies are collected as negative examples
through bootstrapping, negative examples more similar to positive examples are prepared as stages go on, and thus
classifiers become tuned to the positive examples. When overfitting occurs, the classifier cascade shows
performance degradation more in the detection rate than in the false alarm rate. In the proposed strategy, the
imbalance between the detection rate and the false alarm rate is evaluated by computing the weight ratio of positive
examples to negative examples and it is compensated by adjusting the weight ratio prior to boosting at each stage.
Experimental results confirm the effectiveness of the proposed strategy. For experiments, face and pedestrian
classifier cascades were trained by employing previous approaches and the proposed strategy. By employing the
proposed strategy, the detection rate of classifier cascades was significantly improved for both face and pedestrian.
Description
Subject(s)
AdaBoost, bootstrapping, kaskáda posílených klasifikátorů, překlápění, detekce obličeje, detekce chodců
Citation
WSCG 2015: full papers proceedings: 23rd International Conference in Central Europeon Computer Graphics, Visualization and Computer Visionin co-operation with EUROGRAPHICS Association, p. 183-189.