Deep convolutional neural networks have achieved great progress in image denoising tasks. However, their complicated architectures and heavy computational cost hinder their deployments on a mobile device. Some recent efforts in designing lightweight denoising networks focus on reducing either FLOPs (floating-point operations) or the number of parameters. However, these metrics are not directly correlated with the on-device latency. By performing extensive analysis and experiments, we identify the network architectures that can fully utilize powerful neural processing units (NPUs) and thus enjoy both low latency and excellent denoising performance. To this end, we propose a mobile-friendly denoising network, namely MFDNet. The experiments show that MFDNet achieves state-of-the-art performance on real-world denoising benchmarks SIDD and DND under real-time latency on mobile devices. The code and pre-trained models will be released.
翻译:深相神经网络在图像拆卸任务方面取得了巨大进步,然而,它们的复杂结构和沉重的计算成本阻碍了其在移动设备上的部署。最近一些设计轻度拆卸网络的努力侧重于减少FLOPs(浮点操作)或参数数量。然而,这些指标与安装时的悬浮不直接相关。通过进行广泛的分析和实验,我们确定了能够充分利用强力神经处理器(NPUs)的网络结构,从而享有低潜度和极好的拆卸性能。为此,我们提议建立一个移动友好型拆卸网络,即MFDNet。实验显示,MFDNet在实时悬浮的移动设备上,在实时悬浮状态下实现SIDD和DND的最先进的实绩。代码和预先培训的模型将会被发布。