首页> 外文会议>8th World Multi-Conference on Systemics, Cybernetics and Informatics(SCI 2004) vol.6: Image, Acoustic, Signal Processing and Optical Systems, Technologies and Applications >Discriminant Feature Selection by Genetic Programming: Towards a domain independent multi-class object detection system
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Discriminant Feature Selection by Genetic Programming: Towards a domain independent multi-class object detection system

机译:遗传编程的鉴别特征选择:面向领域独立的多类目标检测系统

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摘要

In order to implement a multi-class object detection system, an efficient object representation is needed; in this short paper, we present a feature selection method based on the Genetic Programming paradigm. This method allows for the identification of a set of features that best represent the classes in the problem at hand. The idea would then be to have a broad set of features to describe any object, and then to use the presented feature selection method to adapt the description to the actual needs of the classification problem. Furthermore, the tree like solutions generated by the method can be interpreted and modified for increased generality. A brief review of literature, the first implementation of the method and the first results are presented here. The method shows potential to be used as a building block of a detection system, although further experimentation is underway in order to fully asses the power of the method.
机译:为了实现多类物体检测系统,需要有效的物体表示。在本文中,我们提出了一种基于遗传编程范例的特征选择方法。这种方法可以识别出一组最能代表当前问题类别的特征。这样的想法将是具有广泛的特征集来描述任何对象,然后使用所提供的特征选择方法来使描述适应分类问题的实际需求。此外,可以解释和修改该方法生成的树状解决方案,以提高通用性。此处简要介绍文献,该方法的第一个实施方法和第一个结果。该方法显示出有潜力用作检测系统的组成部分,尽管正在进行进一步的实验以充分评估该方法的功能。

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