论文标题
Addersr:朝向节能图像超分辨率
AdderSR: Towards Energy Efficient Image Super-Resolution
论文作者
论文摘要
本文使用Adder神经网络(Addernet)研究了单图像超分辨率问题。与卷积神经网络相比,addernet利用添加来计算输出特征,因此避免了大量的常规乘法能量消耗。但是,由于不同的计算范式,很难直接将addernet在大规模图像分类上的现有成功继承到图像超分辨率任务。具体而言,加法器操作无法轻易学习身份映射,这对于图像处理任务至关重要。另外,Addernet无法确保高通滤波器的功能。为此,我们彻底分析了加法操作与身份映射和插入快捷方式之间的关系,以增强使用加法网络的SR模型的性能。然后,我们开发一种可学习的功率激活,以调整功能分布和完善细节。在多个基准模型和数据集上进行的实验表明,我们使用addernet的图像超分辨率模型可以实现与CNN基线的可比性能和视觉质量,并且减少了能源消耗的约2 $ \ times $。
This paper studies the single image super-resolution problem using adder neural networks (AdderNet). Compared with convolutional neural networks, AdderNet utilizing additions to calculate the output features thus avoid massive energy consumptions of conventional multiplications. However, it is very hard to directly inherit the existing success of AdderNet on large-scale image classification to the image super-resolution task due to the different calculation paradigm. Specifically, the adder operation cannot easily learn the identity mapping, which is essential for image processing tasks. In addition, the functionality of high-pass filters cannot be ensured by AdderNet. To this end, we thoroughly analyze the relationship between an adder operation and the identity mapping and insert shortcuts to enhance the performance of SR models using adder networks. Then, we develop a learnable power activation for adjusting the feature distribution and refining details. Experiments conducted on several benchmark models and datasets demonstrate that, our image super-resolution models using AdderNet can achieve comparable performance and visual quality to that of their CNN baselines with an about 2$\times$ reduction on the energy consumption.