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Accelerating image super-resolution regression by a hybrid implementation in mobile devices

机译:通过移动设备中的混合实现来加速图像超分辨率回归

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This paper introduces a new super-resolution algorithm based on machine learning along with a novel hybrid implementation for next generation mobile devices. The proposed super-resolution algorithm entails a multivariate polynomial regression method using only the input image properties for the learning task. Although it is widely believed that machine learning algorithms are not appropriate for real-time implementation, the paper in hand proves that there are indeed specific hypothesis representations that are able to be integrated into real-time mobile applications. With aim to achieve this goal, we take advantage of the increasing GPU employment in modern mobile devices. More precisely, we utilize the mobile GPU as a co-processor in a hybrid pipelined implementation achieving significant performance speedup along with superior quantitative interpolation results.
机译:本文介绍了一种基于机器学习的新超分辨率算法,以及针对下一代移动设备的新型混合实现。提出的超分辨率算法需要仅使用输入图像属性进行学习任务的多元多项式回归方法。尽管人们普遍认为机器学习算法不适用于实时实现,但本文证明了确实存在特定的假设表示形式,可以将其集成到实时移动应用程序中。为了实现这一目标,我们利用了在现代移动设备中不断增加的GPU使用率的优势。更准确地说,我们在混合流水线实现中将移动GPU用作协处理器,从而显着提高了性能,并提供了出色的定量插值结果。

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