论文标题
通过时空融合的视频重建模糊编码图像对
Video Reconstruction by Spatio-Temporal Fusion of Blurred-Coded Image Pair
论文作者
论文摘要
基于学习的方法已使视频序列从单个运动腔图像或单个编码的曝光图像恢复。从单个运动毛线图像中恢复视频是一个非常不适的问题,而恢复的视频通常有许多伪像。除此之外,运动方向丢失,并导致运动歧义。但是,它的优点是将信息完全保存在场景的静态部分中。传统的编码曝光框架是更好的,但仅样品占空时量的一小部分,最多是时空量的50%。在这里,我们建议使用完全暴露(模糊)图像中存在的互补信息以及编码的曝光图像,以恢复高富达视频,而没有任何运动歧义。我们的框架由共享编码器组成,然后是一个注意模块,以选择性地将完全暴露的图像中的空间信息与编码图像中的时间信息相结合,然后将其超级分辨以恢复非歧义的高质量视频。我们算法的输入是一种完全公开的编码图像对。这样的采集系统已经以编码二桶(C2B)相机的形式存在。我们证明,使用模糊的图像对的我们提出的深度学习方法比仅来自模糊图像或仅编码图像的图像对产生的结果要好得多。
Learning-based methods have enabled the recovery of a video sequence from a single motion-blurred image or a single coded exposure image. Recovering video from a single motion-blurred image is a very ill-posed problem and the recovered video usually has many artifacts. In addition to this, the direction of motion is lost and it results in motion ambiguity. However, it has the advantage of fully preserving the information in the static parts of the scene. The traditional coded exposure framework is better-posed but it only samples a fraction of the space-time volume, which is at best 50% of the space-time volume. Here, we propose to use the complementary information present in the fully-exposed (blurred) image along with the coded exposure image to recover a high fidelity video without any motion ambiguity. Our framework consists of a shared encoder followed by an attention module to selectively combine the spatial information from the fully-exposed image with the temporal information from the coded image, which is then super-resolved to recover a non-ambiguous high-quality video. The input to our algorithm is a fully-exposed and coded image pair. Such an acquisition system already exists in the form of a Coded-two-bucket (C2B) camera. We demonstrate that our proposed deep learning approach using blurred-coded image pair produces much better results than those from just a blurred image or just a coded image.