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Adaptive Principal Component Analysis Combined with Feature Extraction-Based Method for Feature Identification in Manufacturing

机译:自适应主成分分析与基于特征提取的制造特征识别的方法相结合

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This paper developed a principal component analysis (PCA)-integrated algorithm for feature identification in manufacturing; this algorithm is based on an adaptive PCA-based scheme for identifying image features in vision-based inspection. PCA is a commonly used statistical method for pattern recognition tasks, but an effective PCA-based approach for identifying suitable image features in manufacturing has yet to be developed. Unsuitable image features tend to yield poor results when used in conventional visual inspections. Furthermore, research has revealed that the use of unsuitable or redundant features might influence the performance of object detection. To address these problems, the adaptive PCA-based algorithm developed in this study entails the identification of suitable image features using a support vector machine (SVM) model for inspecting of various object images; this approach can be used for solving the inherent problem of detection that occurs when the extraction contains challenging image features in manufacturing processes. The results of experiments indicated that the proposed algorithm can successfully be used to adaptively select appropriate image features. The algorithm combines image feature extraction and PCA/SVM classification to detect patterns in manufacturing. The algorithm was determined to achieve high-performance detection and to outperform the existing methods.
机译:本文开发了一种主要成分分析(PCA) - 集成算法,用于制造业的特征识别;该算法基于基于自适应PCA的方案来识别基于视觉检查中的图像特征。 PCA是一种用于模式识别任务的常用统计方法,但是尚未开发出用于识别制造中合适的图像特征的有效PCA的方法。在传统的视觉检查中使用时,不适合的图像特征往往会产生差的结果。此外,研究表明,使用不合适或冗余特征可能会影响物体检测的性能。为了解决这些问题,本研究中开发的基于自适应PCA的算法需要使用支持向量机(SVM)模型来识别适当的图像特征,用于检查各种对象图像;这种方法可用于解决当提取在制造过程中包含具有挑战性的图像特征时发生的检测的固有问题。实验结果表明,所提出的算法可以成功地用于自适应地选择适当的图像特征。该算法结合了图像特征提取和PCA / SVM分类以检测制造中的模式。确定算法实现高性能检测并优于现有方法。

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