Recovering clear structures from severely blurry inputs is a challenging problem due to the large movements between the camera and the scene. Although some works apply segmentation maps on human face images for deblurring, they cannot handle natural scenes because objects and degradation are more complex, and inaccurate segmentation maps lead to a loss of details. For general scene deblurring, the feature space of the blurry image and corresponding sharp image under the high-level vision task is closer, which inspires us to rely on other tasks (e.g. classification) to learn a comprehensive prior in severe blur removal cases. We propose a cross-level feature learning strategy based on knowledge distillation to learn the priors, which include global contexts and sharp local structures for recovering potential details. In addition, we propose a semantic prior embedding layer with multi-level aggregation and semantic attention transformation to integrate the priors effectively. We introduce the proposed priors to various models, including the UNet and other mainstream deblurring baselines, leading to better performance on severe blur removal. Extensive experiments on natural image deblurring benchmarks and real-world images, such as GoPro and RealBlur datasets, demonstrate our method's effectiveness and generalization ability.
翻译:从严重模糊的投入中回收清晰的结构是一个棘手的问题,因为照相机和场景之间的移动很大。虽然有些作品在人类表面图像上应用了分层图,以进行分层图以进行分流,但是它们无法处理自然场景,因为物体和降解更为复杂,不准确的分层图导致丢失细节。对于一般场景分流,在高层次的视野任务下模糊图像和相应的尖锐图像的特征空间更为接近,这促使我们依赖其他任务(例如分类)来学习在严重模糊的清除案例中之前的全面性研究。我们提出了基于知识蒸馏的跨层次特征学习战略,以学习前科,包括全球背景和尖锐的地方结构,以恢复潜在细节。此外,我们提出了一个包含多层次集合和分层注意转化的先前语义层,以便有效地整合前科。我们介绍了各种模型的拟议前科,包括UNet和其他主流分流基线,从而导致在严重模糊清除案例中更好地表现。我们广泛进行了关于自然图像分解基准和真实世界图像的实验,例如GoPro和RealBset 展示我们的一般能力。