基于显著性的移动设备功耗抑制深度框架

Jing Su, Yi-Chi Huang, Jia-Li Yin, Bo-Hao Chen, Shenming Qu
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引用次数: 1

摘要

随着人们对移动设备耗电问题的日益关注,许多功率受限的对比度增强算法已被开发用于嵌入发光显示器的移动设备,如有机发光二极管。然而,传统的功率约束对比度增强算法不可避免地会降低图像的视觉美感,以换取移动设备的节能。本文提出了一种基于显著性引导的深度框架的可训练功率约束对比度增强算法,用于在保持图像感知质量的同时抑制图像的功耗。我们的算法依赖于显示图像的成像特征对人类视觉感知是显著的这一事实。因此,我们使用深度卷积神经网络将输入图像分解为成像特征和文本特征,并对文本特征进行降级以达到抑制功耗的目的。实验结果表明,该算法能够在保持图像视觉美感的同时有效降低功耗,优于传统的功率约束对比度增强算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Saliency-Guided Deep Framework for Power Consumption Suppressing on Mobile Devices
With the growing concern for power-hungry on mobile devices, many power constrained contrast enhancement algorithms have been developed in the mobile devices embedded with emissive displays, such as organic light-emitting diodes. However, conventional power constrained contrast enhancement algorithms inevitably degrade the visual aesthetics of images as a trade-off to gain the power-saving for mobile devices. This paper proposes a trainable power-constrained contrast enhancement algorithm based on a saliency-guided deep framework for suppressing the power consumption of an image while preserving its perceptual quality. Our algorithm relies on the fact that imaging features of a displayed image is salient to human visual perception. Hence, we decompose the input image into the imaging features and textual features with a deep convolutional neural networks, and degrade those textual features to achieve the suppression of power consumption. Experimental results demonstrate that our algorithm is able to maintain visual aesthetics of images while reducing the power consumption effectively, outperforming conventional power-constrained contrast enhancement algorithms.
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