Occlusion-Aware Rolling Shutter Rectification of 3D Scenes

Subeesh Vasu, R. MaheshMohanM., A. Rajagopalan
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引用次数: 33

Abstract

A vast majority of contemporary cameras employ rolling shutter (RS) mechanism to capture images. Due to the sequential mechanism, images acquired with a moving camera are subjected to rolling shutter effect which manifests as geometric distortions. In this work, we consider the specific scenario of a fast moving camera wherein the rolling shutter distortions not only are predominant but also become depth-dependent which in turn results in intra-frame occlusions. To this end, we develop a first-of-its-kind pipeline to recover the latent image of a 3D scene from a set of such RS distorted images. The proposed approach sequentially recovers both the camera motion and scene structure while accounting for RS and occlusion effects. Subsequently, we perform depth and occlusion-aware rectification of RS images to yield the desired latent image. Our experiments on synthetic and real image sequences reveal that the proposed approach achieves state-of-the-art results.
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三维场景的闭塞感知卷帘门校正
绝大多数当代相机采用滚动快门(RS)机制来捕捉图像。由于时序机制,运动相机所获得的图像受到滚动快门效应的影响,表现为几何畸变。在这项工作中,我们考虑了快速移动相机的特定场景,其中滚动快门失真不仅占主导地位,而且还变得依赖于深度,从而导致帧内遮挡。为此,我们开发了一种首创的管道来从一组这样的RS扭曲图像中恢复3D场景的潜在图像。该方法在考虑RS和遮挡效应的情况下,依次恢复摄像机运动和场景结构。随后,我们对RS图像进行深度和闭塞感知校正,以产生所需的潜在图像。我们在合成和真实图像序列上的实验表明,所提出的方法达到了最先进的结果。
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