This paper proposes crack segmentation augmented by super resolution (SR) with deep neural networks. In the proposed method, a SR network is jointly trained with a binary segmentation network in an end-to-end manner. This joint learning allows the SR network to be optimized for improving segmentation results. For realistic scenarios, the SR network is extended from non-blind to blind for processing a low-resolution image degraded by unknown blurs. The joint network is improved by our proposed two extra paths that further encourage the mutual optimization between SR and segmentation. Comparative experiments with SoTA segmentation methods demonstrate the superiority of our joint learning, and various ablation studies prove the effects of our contributions.
翻译:本文建议以超分辨率增强裂缝分解,并配有深神经网络。在拟议方法中,SR网络以端对端方式与二分分解网络共同培训。这种联合学习使SR网络得以优化,以改善分解结果。在现实情况下,SR网络从非盲向盲,处理因不明模糊而退化的低分辨率图像。我们提出的两个额外途径进一步鼓励SR和分解之间的相互优化,从而改进了联合网络。SOTA分解方法的比较实验显示了我们共同学习的优势,而各种通缩研究证明了我们所作贡献的效果。</s>