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首页> 外文期刊>IEEE Transactions on Image Processing >Joint Stereo Video Deblurring, Scene Flow Estimation and Moving Object Segmentation
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Joint Stereo Video Deblurring, Scene Flow Estimation and Moving Object Segmentation

机译:联合立体声视频去掩饰,场景流估计和移动对象分割

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摘要

Stereo videos for the dynamic scenes often show unpleasant blurred effects due to the camera motion and the multiple moving objects with large depth variations. Given consecutive blurred stereo video frames, we aim to recover the latent clean images, estimate the 3D scene flow and segment the multiple moving objects. These three tasks have been previously addressed separately, which fail to exploit the internal connections among these tasks and cannot achieve optimality. In this paper, we propose to jointly solve these three tasks in a unified framework by exploiting their intrinsic connections. To this end, we represent the dynamic scenes with the piece-wise planar model, which exploits the local structure of the scene and expresses various dynamic scenes. Under our model, these three tasks are naturally connected and expressed as the parameter estimation of 3D scene structure and camera motion (structure and motion for the dynamic scenes). By exploiting the blur model constraint, the moving objects and the 3D scene structure, we reach an energy minimization formulation for joint deblurring, scene flow and segmentation. We evaluate our approach extensively on both synthetic datasets and publicly available real datasets with fast-moving objects, camera motion, uncontrolled lighting conditions and shadows. Experimental results demonstrate that our method can achieve significant improvement in stereo video deblurring, scene flow estimation and moving object segmentation, over state-of-the-art methods.
机译:用于动态场景的立体视频通常会显示由于相机运动和具有大深度变化的多个移动物体而令人不快的模糊效果。给定连续模糊的立体声视频帧,我们的目标是恢复潜在的清洁图像,估计3D场景流并段分段多个移动对象。这三个任务先前已单独解决,这未能利用这些任务之间的内部连接,无法实现最佳状态。在本文中,我们建议通过利用其内在连接共同解决统一的框架中的这三个任务。为此,我们代表了具有片断平面模型的动态场景,它利用场景的本地结构并表达各种动态场景。在我们的模型下,这三个任务自然地连接并表示为3D场景结构和相机运动的参数估计(动态场景的结构和运动)。通过利用模型模型约束,移动物体和3D场景结构,我们达到联合去孔,场景流和分割的能量最小化配方。我们在合成数据集和公开的实时数据集中广泛评估我们的方法,具有快速移动的物体,相机运动,不受控制的照明条件和阴影。实验结果表明,我们的方法可以在最先进的方法中实现立体视频去纹,场景流估计和移动对象分割的显着改善。

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