In most of computer vision applications, motion blur is regarded as an undesirable artifact. However, it has been shown that motion blur in an image may have practical interests in fundamental computer vision problems. In this work, we propose a novel framework to estimate optical flow from a single motion-blurred image in an end-to-end manner. We design our network with transformer networks to learn globally and locally varying motions from encoded features of a motion-blurred input, and decode left and right frame features without explicit frame supervision. A flow estimator network is then used to estimate optical flow from the decoded features in a coarse-to-fine manner. We qualitatively and quantitatively evaluate our model through a large set of experiments on synthetic and real motion-blur datasets. We also provide in-depth analysis of our model in connection with related approaches to highlight the effectiveness and favorability of our approach. Furthermore, we showcase the applicability of the flow estimated by our method on deblurring and moving object segmentation tasks.
翻译:在大多数计算机视觉应用中,运动模糊被视为不可取的人工制品,然而,人们已经表明,图像模糊的移动可能会对基本的计算机视觉问题产生实际利益。在这项工作中,我们提出了一个新的框架,以端到端的方式从一个运动模糊的图像中估计光学流。我们用变压器网络设计我们的网络,从全球和地方上学习运动模糊输入的编码特征的不同动作,并在没有明确框架监督的情况下解码左框架和右框架特征。然后使用流动估计网络,以粗略到节奏的方式估计解码特征的光学流。我们通过一系列关于合成和真实运动蓝色数据集的实验,从质量和数量上评估我们的模型。我们还提供与相关方法有关的模型的深入分析,以突出我们方法的有效性和可取性。此外,我们展示了用我们的方法估计的流流对分解和移动物体任务的适用性。