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Depth From Motion and Optical Blur With an Unscented Kalman Filter

机译:使用无味卡尔曼滤镜可从运动和光学模糊深度入手

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摘要

Space-variantly blurred images of a scene contain valuable depth information. In this paper, our objective is to recover the 3-D structure of a scene from motion blur/optical defocus. In the proposed approach, the difference of blur between two observations is used as a cue for recovering depth, within a recursive state estimation framework. For motion blur, we use an unblurred-blurred image pair. Since the relationship between the observation and the scale factor of the point spread function associated with the depth at a point is nonlinear, we propose and develop a formulation of unscented Kalman filter for depth estimation. There are no restrictions on the shape of the blur kernel. Furthermore, within the same formulation, we address a special and challenging scenario of depth from defocus with translational jitter. The effectiveness of our approach is evaluated on synthetic as well as real data, and its performance is also compared with contemporary techniques.
机译:场景的空间变化模糊图像包含有价值的深度信息。在本文中,我们的目标是从运动模糊/光学散焦中恢复场景的3-D结构。在所提出的方法中,在递归状态估计框架内,将两个观测值之间的模糊差异用作恢复深度的线索。对于运动模糊,我们使用未模糊的图像对。由于与点深度相关的观测值和点扩展函数的比例因子之间的关系是非线性的,因此我们提出并开发了无味卡尔曼滤波器的公式,用于深度估计。对模糊内核的形状没有任何限制。此外,在相同的表述中,我们解决了从散焦到平移抖动的深度的特殊挑战性场景。我们的方法的有效性通过合成数据和真实数据进行了评估,并且其性能也与当代技术进行了比较。

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