非均匀相机抖动去模糊中的 IMU 辅助精确模糊内核再估计。

Jianxiang Rong;Hua Huang;Jia Li
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引用次数: 0

摘要

针对相机抖动的图像去模糊是计算机视觉领域备受关注的问题。一种很有前景的解决方案是补丁式非均匀图像去模糊算法,该算法通常在不同的模糊核之间建立线性变换模型,以重新估计估计不准确的模糊核。然而,线性模型难以有效描述模糊核之间的非线性变换关系。一个重要的观察结果是,惯性测量单元(IMU)提供了相机的运动数据,这有助于描述模糊核的地标。本文提出了一种新的惯性测量单元辅助方法,用于重新估计估计不准确的模糊核。该方法利用 IMU 运动数据在不同光斑的模糊核之间建立了一个非线性变换关系模型。随后,应用优化问题,通过将该关系模型与邻近的估计良好的模糊核结合起来,重新估计估计不佳的模糊核。实验结果表明,这种模糊核重新估计方法优于现有方法。
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IMU-Assisted Accurate Blur Kernel Re-Estimation in Non-Uniform Camera Shake Deblurring
Image deblurring for camera shake is a highly regarded problem in the field of computer vision. A promising solution is the patch-wise non-uniform image deblurring algorithms, where a linear transformation model is typically established between different blur kernels to re-estimate poorly estimated blur kernels. However, the linear model struggles to effectively describe the nonlinear transformation relationships between blur kernels. A key observation is that the inertial measurement unit (IMU) provides motion data of the camera, which is helpful in describing the landmarks of the blur kernel. This paper presents a new IMU-assisted method for the re-estimation of poorly estimated blur kernels. This method establishes a nonlinear transformation relationship model between blur kernels of different patches using IMU motion data. Subsequently, an optimization problem is applied to re-estimate poorly estimated blur kernels by incorporating this relationship model with neighboring well-estimated kernels. Experimental results demonstrate that this blur kernel re-estimation method outperforms existing methods.
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