Recently, the single image super-resolution (SISR) approaches with deep and complex convolutional neural network structures have achieved promising performance. However, those methods improve the performance at the cost of higher memory consumption, which is difficult to be applied for some mobile devices with limited storage and computing resources. To solve this problem, we present a lightweight multi-scale feature interaction network (MSFIN). For lightweight SISR, MSFIN expands the receptive field and adequately exploits the informative features of the low-resolution observed images from various scales and interactive connections. In addition, we design a lightweight recurrent residual channel attention block (RRCAB) so that the network can benefit from the channel attention mechanism while being sufficiently lightweight. Extensive experiments on some benchmarks have confirmed that our proposed MSFIN can achieve comparable performance against the state-of-the-arts with a more lightweight model.
翻译:最近,单一图像超分辨率(SISSR)方法具有深层和复杂的进化神经网络结构,取得了良好的效果,然而,这些方法以更高的内存消耗为代价改善了性能,而内存消耗量却较高,难以适用于储存和计算资源有限的一些移动设备。为了解决这个问题,我们提出了一个轻量的多级特征互动网络(MSFIN),对于轻量级的超分辨率网络,MSFIN扩大了可接收场,并充分利用了不同规模和互动连接中低分辨率观测图像的信息功能。此外,我们设计了一个轻量的经常性留置频道关注区块(RRCAB),以便网络能够从频道关注机制中受益,同时具有足够轻的重量。关于某些基准的广泛实验证实,我们提议的MSFIN能够以较轻的模型取得与最新产品相类似的业绩。