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Pattern Recognition Combining De-noising and Linear Discriminant Analysis within a Real World application

机译:模式识别在真实世界应用中结合去噪和线性判别分析

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Computer aided systems based on image analysis have become popular in zoological systematics in the recent years. For insects in particular, the difficult taxonomy and the lack of experts greatly hampers studies on conservation and ecology. This problem was emphasized at the UN Conference of Environment, Rio 1992, leading to a directive to intensify efforts to develop automated identification systems for pollinating insects. We have developed a system for the automated identification of bee species which employs image analysis to classify bee forewings. Using the knowledge of a zoological expert to create learning sets of images together with labels indicating the species membership, we have formulated this problem in the framework of supervised learning. while the image analysis process is documented in [5], we describe in this paper a new model for classification that consists of a combination of Linear Discriminant Analysis with a de-noising technique based on a nonlinear generalization of principal component analysis, called Kernel PCA. This model combines the property of visualization provided by Linear Discriminant Analysis with powerful feature extraction and leads to significantly improved classification performance.
机译:近年来,基于图像分析的计算机辅助系统在动物学系统中变得流行。特别是昆虫,特别是困难的分类和缺乏专家大大妨碍了保护和生态学的研究。联合国环境大会上强调了这个问题,RIO 1992,导致指令加强为开发授粉昆虫的自动识别系统的努力。我们开发了一个系统,用于自动识别蜜蜂种类,采用图像分析来分类蜜蜂前翅。利用动物学专家的知识与指示物种成员资格的标签一起创建学习图像集,我们在监督学习框架中制定了这个问题。虽然图像分析过程记录在[5]中,我们在本文中描述了分类的新模型,该模型包括基于主成分分析的非线性概括的线性判别分析的组合,称为内核PCA 。该模型结合了线性判别分析提供的可视化性能,具有强大的特征提取,并导致显着提高的分类性能。

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