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      An improved image processing algorithm for automatic defect inspection in TFT-LCD TCON

      1 , 2 , 3
      Nonlinear Engineering
      Walter de Gruyter GmbH

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          Abstract

          The demand to improve image display in TFT-LCD, implementation of design for image processing is important. In order to meet the specific requirements of low-end Thin Film Transistor-Liquid-Crystal-Display (TFT-LCD) image display. This paper adopts a novel algorithm to conduct subsequent processing of the medical image after SCALER scaling, including contrast adjustment, gamma correction and dithering. Dithering algorithm is the focus of our research. After the study of some classical video image processing algorithms, and considering the real-time requirements, an intelligent algorithm is implemented for hardware implementation and improvement. For each part, MATLAB language is firstly used for advanced simulation to verify its feasibility, and then Right-To-Left (RTL) hardware language description is carried out. The characteristics extraction from images is performed implementing RGB standard and grayscale images. The pixel intensity is analyzed for each RGB component and the variance is calculated. When a panel displays a variation of 6% related with their reference values, the panel is rejected. The results obtained from classification shows a 95.24% accuracy rate in the detection of defects. The results of the two simulations show that the design achieves the expected goal, and the processing time is shorter.

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          Color Retinal Image Enhancement Based on Luminosity and Contrast Adjustment.

          Many common eye diseases and cardiovascular diseases can be diagnosed through retinal imaging. However, due to uneven illumination, image blurring, and low contrast, retinal images with poor quality are not useful for diagnosis, especially in automated image analyzing systems. Here we propose a new image enhancement method to improve color retinal image luminosity and contrast.
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            CrackIT — An image processing toolbox for crack detection and characterization

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              RGB Histogram Based Color Image Segmentation Using Firefly Algorithm

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                Author and article information

                Journal
                Nonlinear Engineering
                Walter de Gruyter GmbH
                2192-8029
                2192-8010
                January 01 2021
                October 01 2021
                January 01 2021
                January 01 2021
                October 08 2021
                January 01 2021
                : 10
                : 1
                : 293-303
                Affiliations
                [1 ]College of Art and Design , Business College of SHANXI University , China
                [2 ]Department of Electrical - Electronics Engineering , Trakya University , , Edirne , Turkey
                [3 ]Chitkara University Institute of Engineering and Technology, Chitkara University , Punjab , India
                Article
                10.1515/nleng-2021-0023
                90b5e2dd-1236-44fb-b0ff-ec80393539b7
                © 2021

                http://creativecommons.org/licenses/by/4.0

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