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Local Backlight Dimming for Liquid Crystal Displays via Convolutional Neural Network

机译:液晶局部背光调光通过卷积神经网络显示

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This paper presents a new local backlight dimming (LBD) for liquid crystal displays (LCD) method based on a convolutional neural network (CNN). Many previous LBD algorithms controlled the backlight intensity relying on hand-crafted features within a local block, that is, statistical information of pixel values in each block. However, they have a lack of generalization ability due to the use of hand-crafted features, which are usually not adaptive to the input properties. Also, they usually disregarded the diffusion property of the backlight that may affect the neighboring blocks. In this respect, we propose a CNN-based LBD algorithm to alleviate these problems. To address the lack of generalization ability of hand-crafted features, we adopt a CNN-based approach that learns the features and thus provides appropriate backlight intensities for the given inputs. Also, the diffusion property of light and leakage property of liquid crystal are considered when training the network, thereby alleviating the loss of details while achieving the high contrast ratio. Experiments show that the proposed method outperforms both quantitatively and qualitatively compared to the other LBD algorithms. Specifically, for the images from the DIV2K dataset, the proposed method achieves at least 1dB enhancement in PSNR, showing the generalization performance.
机译:本文介绍了基于卷积神经网络(CNN)的液晶显示器(LCD)方法的新型局部背光调光(LBD)。许多以前的LBD算法控制了背光强度依赖于本地块内的手工制作的特征,即每个块中的像素值的统计信息。然而,由于使用手工制作的功能,它们具有缺乏泛化能力,这通常不会自适应输入属性。而且,它们通常忽略了可能影响邻居块的背光的扩散特性。在这方面,我们提出了一种基于CNN的LBD算法来缓解这些问题。为了解决手工制作功能的缺乏能力,我们采用基于CNN的方法来学习特征,从而为给定输入提供适当的背光强度。而且,在训练网络时考虑了液晶的光和泄漏性的扩散特性,从而减轻了细节的损失,同时实现高对比度。实验表明,与其他LBD算法相比,所提出的方法比较与其他LBD算法相比定量和定性。具体地,对于来自DIV2K数据集的图像,所提出的方法在PSNR中实现了至少1dB的增强,示出了泛化性能。

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