2011
DOI: 10.1587/transinf.e94.d.1721
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Partial Derivative Guidance for Weak Classifier Mining in Pedestrian Detection

Abstract: SUMMARYBoosting over weak classifiers is widely used in pedestrian detection. As the number of weak classifiers is large, researchers always use a sampling method over weak classifiers before training. The sampling makes the boosting process harder to reach the fixed target. In this paper, we propose a partial derivative guidance for weak classifier mining method which can be used in conjunction with a boosting algorithm. Using weak classifier mining method makes the sampling less degraded in the performance. … Show more

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