Abstract:Aimed at the problems that the VDSR model convolution kernel is single and the DRRN model fails to take advantages of global features, a combined convolution image superresolution model is proposed based on parallel residual convolution neural networks. Firstly, the combined convolution neural layer is structured by the original convolution layer and dilated convolution layer, and the skip connection approach is employed to connect the different layers to take advantage of different level features, completing superresolution network. There are two advantages of this model:①Combination of dilated convolution neural layers and original convolution layers can capture multiscale features without computationconsuming. Based on this approach, the network can get more presentation capacity. ②Skip connection approach fuse lowlevel information and highlevel information. From this approach, different level features can be learned. This means that stronger learning ability can be obtained. Based on the experiment results on multiple data sets, more than 0.1 IFC improvement is achieved, compared with the stateoftheart models VDSR, DRRN, SRCNN in most tasks.