基于改进的 AdaBoost 算法的耳朵检测

Wenjuan Li, Zhichun Mu
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引用次数: 39

摘要

耳朵检测是耳朵识别系统中最重要的一步,这一步的检测效果直接影响到整个识别系统的性能。针对传统AdaBoost算法存在的不足,根据人耳自身的结构特点,对其进行了改进。本文有三个关键贡献。第一个贡献是通过改变弱分类器的权重分布来影响检测器性能的重点,从而降低虚警率。二是引入一个新的参数,称为消除阈值,可以提高检测器的鲁棒性,防止过拟合。利用我们最终得到的探测器,我们在CAS-PEAL数据库和另外两个检测数据库上进行了测试。实验结果表明,该耳检测系统具有良好的检测效果,准确率达97%以上。第三是设计了一个基于DSP的耳朵检测系统,并取得了良好的实际应用效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ear Detection Based on Improved AdaBoost Algorithm
Ear detection is the most important step of an ear recognition system, and the detection effect of this step directly affects the performance of the whole recognition system. according to the structural characteristics of the ear itself, this paper makes improvement on the traditional AdaBoost algorithm in view of its deficiency. There are three key contributions in this paper. The first contribution is a method which can affect the emphasis point of the detector performance in order to reduce the false alarm rate, by means of changing the weight distribution of weak classifiers.The second is the introduction of a new parameter called elimination threshold ,which can improve the robustness of the detector and prevent over fitting. With the detector that we finally obtained, we test on the database of CAS-PEAL and the other two detection databases. The test results an upwards of 97% hit rate, the experimental results indicate that the ear detecting system in this paper has good detection effect. The third contribution is we designed an ear detection system of DSP and gained a good result of practical application.
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