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Journal ArticleDOI

Automatic target defect identification for TFT-LCD array process inspection using kernel FCM-based fuzzy SVDD ensemble

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TLDR
Experimental results indicate that the proposed F-SVDD ensemble not only greatly improves the performance of SVDD, but also outperforms other commonly used classifiers such as support vector machine (SVM), in terms of target defect identification rate.
Abstract
Inline defect inspection plays a critical role in yield improvement for thin film transistor liquid crystal display (TFT-LCD) manufacturing. In array process, some defects are critical to the quality of LCD panels (target defects), while some are not (non-target defects). This paper proposes a target defect identification system by which the target defects can be automatically identified. The proposed system is composed of five parts: projection-based pixel segmentation, normal pixel removal, feature extraction, target defect identification, and decision making. For the identifier design, a novel one-class kernel classifier called fuzzy support vector data description (F-SVDD) ensemble is proposed. F-SVDD ensemble is proposed to solve two critical problems existing in SVDD, including the overfitting due to outliers, and the multi-cluster distribution. In F-SVDD ensemble, both the best number of the F-SVDD members in the ensemble and the elements of each member can be determined by using partitioning-entropy-based kernel fuzzy c-means (KFCM) algorithm. Experimental results, carried out by real defective images provided by a LCD manufacturer, indicate that the proposed F-SVDD ensemble not only greatly improves the performance of SVDD, but also outperforms other commonly used classifiers such as support vector machine (SVM), in terms of target defect identification rate. In addition, the task of target defect identification for one defective image can be accomplished within 3s by the proposed system.

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Citations
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Journal ArticleDOI

Automatic surface defect detection for mobile phone screen glass based on machine vision

TL;DR: An improved fuzzy c-means cluster (IFCM) algorithm is developed, and the proposed algorithms are validated using a number of experimental tests on MPSG images, showing that it has better performance than other methods.
Journal ArticleDOI

Fast Support Vector Data Descriptions for Novelty Detection

TL;DR: A novel direct preimage-finding method, which is noniterative and involves no free parameters, which can be obtained in real time by the proposed direct method without taking trial-and-error, and the results are very encouraging.
Journal ArticleDOI

Density weighted support vector data description

TL;DR: A new SVDD is proposed introducing the notion of density weight, which is the relative density of each data point based on the density distribution of the target data using the k-nearest neighbor (k-NN) approach, which prioritizes data points in high-density regions, and eventually the optimal description shifts to these regions.
Journal ArticleDOI

A Review and Analysis of Automatic Optical Inspection and Quality Monitoring Methods in Electronics Industry

TL;DR: The defects of the commonly inspected electronic components, such as semiconductor wafers, flat panel displays, printed circuit boards and light emitting diodes, are first explained and inspection algorithms used for detecting the defects in the electronic components are discussed.
Journal ArticleDOI

Identification of egg’s freshness using NIR and support vector data description

TL;DR: It is indicated that it is feasible to identify egg’s freshness using NIR spectroscopy, and SVDD is an excellent choice in solving the problem of imbalance number of training samples.
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