Fast PixelCNN: Based on network acceleration cache and partial generation network

Peizhen Guo, Xiaoran Ni, Xiaogang Chen, Xiangyang Ji
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引用次数: 4

Abstract

Single image super resolution is one of the most important topic in computer vision and image processing research, many convolutional neural networks (CNN) based super resolution algorithms were proposed and achieved advanced performance, especially in recovering image details, in which PixelCNN is the most representative one. However, due to the intensive computation requirement of PixelCNN model, running time remains a major challenge, which limited its wider application. In this paper, several modifications are proposed to improve PixelCNN based recursive super resolution model. First, a discrete logistic mixture likelihood is adopted, then a cache structure for generating process is proposed, with these modifications, numerous redundant computations are removed without loss of accuracy. Finally, a partial generating network is proposed for higher resolution generation. Experiments on CelebA dataset demonstrate the effectiveness the superiority of the proposed method.
快速PixelCNN:基于网络加速缓存和部分生成网络
单幅图像超分辨率是计算机视觉和图像处理研究的重要课题之一,许多基于卷积神经网络(CNN)的超分辨率算法被提出并取得了先进的性能,特别是在图像细节恢复方面,其中以PixelCNN最具代表性。然而,由于PixelCNN模型的计算量很大,运行时间仍然是一个主要的挑战,这限制了其更广泛的应用。本文对基于PixelCNN的递归超分辨率模型进行了改进。首先采用离散逻辑混合似然,然后提出了生成过程的缓存结构,通过这些修改,在不损失精度的情况下消除了大量的冗余计算。最后,提出了一种局部生成网络,用于更高分辨率的生成。在CelebA数据集上的实验验证了该方法的有效性和优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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