一种基于核主成分分析和增强的通用目标检测方法

Saad Ali, M. Shah
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引用次数: 8

摘要

本文提出了一种将核主成分分析与AdaBoost相结合的通用目标类检测框架。用这种方法得到的分类器不受外观、光照条件和周围杂波变化的影响。利用核主成分分析学习了正、负两类对象的非线性形状子空间。特征是通过将示例图像投影到学习到的子空间中来获得的。基础学习器使用贝叶斯分类器建模。然后使用AdaBoost来发现与手头的目标检测任务最相关的特征。本文提出的方法已经成功地使用标准数据集在广泛的对象类别(汽车、飞机、行人、摩托车等)上进行了测试,并显示出良好的性能。使用较小的训练集,以这种方式学习的分类器能够泛化类内变化,同时保持较高的检测率。在大多数对象类别中,我们实现了95%以上的检测率和最小的误报率。我们展示了我们的方法与当前最先进的方法的比较性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An integrated approach for generic object detection using kernel PCA and boosting
In this paper, we present a novel framework for generic object class detection by integrating Kernel PCA with AdaBoost. The classifier obtained in this way is invariant to changes in appearance, illumination conditions and surrounding clutter. A nonlinear shape subspace is learned for positive and negative object classes using kernel PCA. Features are derived by projecting example images onto the learned sub-spaces. Base learners are modeled using Bayes classifier. AdaBoost is then employed to discover the features that are most relevant for the object detection task at hand. Proposed method has been successfully tested on wide range of object classes (cars, airplanes, pedestrians, motorcycles etc) using standard data sets and has shown good performance. Using a small training set, the classifier learned in this way was able to generalize the intra-class variation while still maintaining high detection rate. In most object categories, we achieved detection rates of above 95% with minimal false alarm rates. We demonstrate the comparative performance of our method against current state of the art approaches.
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