With the effective application of deep learning in computer vision, breakthroughs have been made in the research of super-resolution images reconstruction. However, many researches have pointed out that the insufficiency of the neural network extraction on image features may bring the deteriorating of newly reconstructed image. On the other hand, the generated pictures are sometimes too artificial because of over-smoothing. In order to solve the above problems, we propose a novel self-calibrated convolutional generative adversarial networks. The generator consists of feature extraction and image reconstruction. Feature extraction uses self-calibrated convolutions, which contains four portions, and each portion has specific functions. It can not only expand the range of receptive fields, but also obtain long-range spatial and inter-channel dependencies. Then image reconstruction is performed, and finally a super-resolution image is reconstructed. We have conducted thorough experiments on different datasets including set5, set14 and BSD100 under the SSIM evaluation method. The experimental results prove the effectiveness of the proposed network.
翻译:随着计算机视野深层学习的有效应用,在超分辨率图像重建研究方面取得了突破;然而,许多研究指出,对图像特征的神经网络提取不足可能导致新重建图像的恶化;另一方面,产生的图片有时由于过度移动而过于人为;为了解决上述问题,我们提议建立一个全新的自我校准的同系同系的对抗性网络;生成器包括特征提取和图像重建;地貌提取利用自我校准的演进,其中包括四个部分,每个部分都有具体功能。它不仅能够扩大接收场的范围,而且还能获得远程空间和跨频道依赖性。随后进行图像重建,最终重建超分辨率图像。我们根据SSIM评价方法对不同的数据集进行了彻底的实验,包括设置5、设置14和BSD100。实验结果证明了拟议网络的有效性。