摘要

In this paper, an effective algorithm is developed to learn more discriminative multi-class classifiers for achieving more accurate hand detection. At each round of boosting, a set of shared stump classifiers with relatively low discrimination power are selected by using a "slowest error growth" discriminant, and they are further combined to generate a multi-class classifier with high discrimination power. For the learned multi-class classifier, all of its shared stump classifiers can jointly cover all the potential situations (i.e., various classes of hand postures) sufficiently and discriminate each class of hand postures more effectively. In addition, multiple thresholds are set for each stump classifier to enhance its discrimination power. Finally, the optional mask images are further used to reduce both the feature dimensions and the computational cost for searching the appropriate features. The experimental results on both our hand dataset and NUS hand posture dataset-II have demonstrated the effectiveness and efficiency of our algorithm.