Correspondence analysis applied to textural features recognition

M. Trujillo, M. Sadki
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引用次数: 4

Abstract

Correspondence analysis (CA) is a powerful data analysis and decision support statistical method which provides information about the relative contribution of the different factors extracted from datasets under analysis. This method is used for dimensionality reduction and clustering interpretation in a wide range of applications. Our contribution highlights one of CA's potential application in the field of texture features extraction and classification in addition to demonstrating its capability of optimizing a nonlinear transformation of the grey level which may cause problems in other methods. A novel decision support image representation is introduced; its functionality is described and it is validated using nondestructive industrial inspection (NDII) and remote sensing satellite imagery. The behaviour of the new system is studied and its optimal parameters for texture recognition and dimensionality reduction are established by using factors analysis.
对应分析在纹理特征识别中的应用
对应分析(CA)是一种强大的数据分析和决策支持统计方法,它提供了从被分析数据集中提取的不同因素的相对贡献信息。该方法被广泛应用于降维和聚类解释。我们的贡献突出了CA在纹理特征提取和分类领域的潜在应用之一,此外还展示了其优化灰度非线性变换的能力,这在其他方法中可能会引起问题。提出了一种新的决策支持图像表示方法;描述了其功能,并使用无损工业检测(NDII)和遥感卫星图像进行了验证。研究了新系统的行为,并利用因子分析方法确定了纹理识别和降维的最优参数。
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