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FPGA implementation of a real-time super-resolution system using a convolutional neural network

机译:FPGA使用卷积神经网络实现实时超分辨率系统

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Super-resolution technologies are used to fill the gap between high-resolution displays and lower-resolution contents. There are various algorithms to interpolate information, one of which is using a convolutional neural network (CNN). This paper shows FPGA implementation and performance evaluation of a CNN-based super-resolution system, which can process moving images in real time. We apply horizontal and/or vertical flips to network input images instead of commonly used pre-enlargement techniques. This method prevents information loss and enables the network to utilize the best of its input image size. Our system can perform super-resolution from 960×540 pixels to 1920×1080 pixels at not less than 48fps with a latency of less than 1 ms. Even though the network scale and the size of filters are limited due to resource restriction of the FPGA, the system generates clear super-resolution images with smooth edges. The evaluation results also reveal that the proposed system achieves superior quality in terms of the structural similarity (SSIM) index, compared to other systems using pre-enlargement.
机译:超级分辨率技术用于填充高分辨率显示和较低分辨率内容之间的间隙。存在各种算法来插入信息,其中一个是使用卷积神经网络(CNN)。本文显示了基于CNN的超分辨率系统的FPGA实现和性能评估,可以实时处理运动图像。我们将水平和/或垂直翻转应用于网络输入图像而不是常用的预放大技术。该方法可防止信息丢失,并使网络能够利用其输入图像大小的最佳状态。我们的系统可以以960×540像素执行超级分辨率,到1920×1080像素的不小于48fps,延迟小于1 ms。即使网络规模和滤波器的大小因资源限制而受到限制FPGA,系统也会产生具有光滑边缘的清晰超分辨率图像。评估结果还表明,与使用预扩大的其他系统相比,所提出的系统在结构相似性(SSIM)指数方面取得了卓越的质量。

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