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首页> 外文期刊>Components, Packaging and Manufacturing Technology, IEEE Transactions on >A Fast Luminance Inspector for Backlight Modules Based on Multiple Kernel Support Vector Regression
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A Fast Luminance Inspector for Backlight Modules Based on Multiple Kernel Support Vector Regression

机译:基于多核支持向量回归的背光模块快速亮度检测器

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摘要

The liquid crystal display (LCD) is widely used in various devices nowadays, for examples, mobile phones, digital cameras, and machine controllers. Among the components composing an LCD, the backlight module is one of the most important components because it provides a uniform light source for the display. In the current practice of backlight module inspection, a luminance colorimeter is used to examine the luminance emitted from selected areas called check points within the backlight module. Since a backlight module consists of many check points, it takes too much time to inspect one backlight module in the current practice. In this paper, we propose a fast luminance inspector that uses a CCD camera to inspect multiple backlight modules, simultaneously. The inspection speed is improved considerably, and thus, makes the proposed system suitable for use in the production line. The proposed system translates image intensities of all check points into luminance values based on a multiple kernel support vector regression model (MKSVR). The parameters of multiple kernel functions are automatically generated, according to the data distribution characteristics of the training samples. Compared with other studies using a grid search or a heuristic search algorithm to determine optimal kernel parameters, the proposed approach is more flexible and faster. Besides that, as the kernel parameters are adaptive to the training data, the proposed method could make its learning more specific to certain golden training samples. Other methods using learning algorithms such as the neural network and the SVR do not have such flexibility, because in these learning algorithms all training samples are treated equally. The flexible learning property makes the proposed system more appealing for use in the real practical world. Compared with other methods using the neural network model and the SVR model in backlight module inspection, the proposed method is superior in both the accuracy and - he training time required.
机译:液晶显示器(LCD)如今广泛用于各种设备中,例如手机,数码相机和机器控制器。在组成LCD的组件中,背光模块是最重要的组件之一,因为它为显示器提供了均匀的光源。在当前的背光模块检查实践中,亮度色度计用于检查从背光模块内称为检查点的选定区域发出的亮度。由于背光模块由许多检查点组成,因此在当前实践中检查一个背光模块需要太多时间。在本文中,我们提出了一种快速亮度检查器,该检查器使用CCD摄像机同时检查多个背光模块。检查速度大大提高,因此使所提出的系统适用于生产线。所提出的系统基于多核支持向量回归模型(MKSVR)将所有检查点的图像强度转换为亮度值。根据训练样本的数据分布特征,自动生成多个内核函数的参数。与使用网格搜索或启发式搜索算法确定最佳内核参数的其他研究相比,该方法更灵活,更快速。除此之外,由于内核参数对训练数据具有适应性,因此该方法可以使其学习更加针对特定的黄金训练样本。使用学习算法的其他方法(例如神经网络和SVR)不具有这种灵活性,因为在这些学习算法中,所有训练样本均被同等对待。灵活的学习特性使所提出的系统更适合在实际实践中使用。与其他使用神经网络模型和SVR模型进行背光模块检测的方法相比,该方法在准确性和所需的训练时间上均具有优越性。

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