Abstract:In the obstacle detection, obstacle/non-obstacle samples have characteristics of a large range of overlapping in the feature space and uneven distribution. The traditional training method for the classifier is not competent for dealing with such data. Thus, an improved method of maximizing area under the ROC (AUC) is proposed to train classifier. An alternative function is used as the objective function of optimizing AUC. Meanwhile, the particle swarm optimization is introduced to optimize the AUC objective function, and the particle swarm optimization algorithm is improved by using the Butterworth curves and particles with the low fitness value being mutated. The experimental results show that the proposed method effectively solves the local optimization caused by the gradient descent method. Moreover, the detection performance of the proposed method is improved compared with other existing algorithms, and the algorithm is reliable and efficient.
韩光,赵春霞. 一种改进的最大化AUC方法在障碍物检测中的应用[J]. 模式识别与人工智能, 2010, 23(5): 731-737.
HAN Guang,ZHAO Chun-Xia. Improved Method of Maximizing AUC and Its Application to Obstacle Detection. , 2010, 23(5): 731-737.
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