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Geometric Models for Rolling-shutter and Push-broom Sensors

机译:卷帘式和推扫式传感器的几何模型

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摘要

Almost all cell-phones and camcorders sold today are equipped with a  CMOS (Complementary Metal Oxide Semiconductor) image sensor and there is also a general trend to incorporate CMOS sensors in other types of cameras. The CMOS sensor has many advantages over the more conventional CCD (Charge-Coupled Device) sensor such as lower power consumption, cheaper manufacturing and the potential for onchip processing. Nearly all CMOS sensors make use of what is called a rolling shutter readout. Unlike a global shutter readout, which images all the pixels at the same time, a rolling-shutter exposes the image row-by-row. If a mechanical shutter is not used this will lead to geometric distortions in the image when either the camera or the objects in the scene are moving. Smaller cameras, like those in cell-phones, do not have mechanical shutters and systems that do have them will not use them when recording video. The result will look wobbly (jello eect), skewed or otherwise strange and this is often not desirable. In addition, many computer vision algorithms assume that the camera used has a global shutter and will break down if the distortions are too severe. In airborne remote sensing it is common to use push-broom sensors. These sensors exhibit a similar kind of distortion as that of a rolling-shutter camera, due to the motion of the aircraft. If the acquired images are to be registered to maps or other images, the distortions need to be suppressed. The main contributions in this thesis are the development of the three-dimensional models for rolling-shutter distortion correction. Previous attempts modelled the distortions as taking place in the image plane, and we have shown that our techniques give better results for hand-held camera motions. The basic idea is to estimate the camera motion, not only between frames, but also the motion during frame capture. The motion is estimated using image correspondences and with these a non-linear optimisation problem is formulated and solved. All rows in the rollingshutter image are imaged at dierent times, and when the motion is known, each row can be transformed to its rectied position. The same is true when using depth sensors such as the Microsoft Kinect, and the thesis describes how to estimate its 3D motion and how to rectify 3D point clouds. In the thesis it has also been explored how to use similar techniques as for the rolling-shutter case, to correct push-broom images. When a transformation has been found, the images need to be resampled to a regular grid in order to be visualised. This can be done in many ways and dierent methods have been tested and adapted to the push-broom setup. In addition to rolling-shutter distortions, hand-held footage often has shaky camera motion. It is possible to do ecient video stabilisation in combination with the rectication using rotation smoothing. Apart from these distortions, motion blur is a big problem for hand-held photography. The images will be blurry due to the camera motion and also noisy if taken in low light conditions. One of the contributions in the thesis is a method which uses gyroscope measurements and feature tracking to combine several images, taken with a smartphone, into one resulting image with less blur and noise. This enables the user to take photos which would have otherwise required a tripod.
机译:今天出售的几乎所有手机和便携式摄像机都配备了CMOS(互补金属氧化物半导体)图像传感器,并且将CMOS传感器集成到其他类型的相机中也存在普遍趋势。与更传统的CCD(电荷耦合器件)传感器相比,CMOS传感器具有许多优势,例如更低的功耗,更便宜的制造以及片上处理的潜力。几乎所有的CMOS传感器都使用所谓的卷帘式读出器。与全局快门读出同时对所有像素成像的全局快门不同,卷帘式快门逐行曝光图像。如果不使用机械快门,则当照相机或场景中的物体移动时,会导致图像中的几何变形。像手机中的小型相机一样,它们没有机械快门,而装有视频快门的系统也不会使用它们。结果将看起来不稳定(果冻效应),歪斜或其他奇怪的现象,这通常是不可取的。此外,许多计算机视觉算法都假设所用相机具有全局快门,如果失真太严重,相机会崩溃。在机载遥感中,通常使用推扫式传感器。由于飞机的运动,这些传感器表现出与卷帘相机类似的变形。如果要将获取的图像注册到地图或其他图像,则需要抑制失真。本文的主要贡献是开发了用于卷帘快门失真校正的三维模型。先前的尝试将畸变建模为在图像平面中发生,并且我们已经表明,我们的技术可以为手持式摄像机运动提供更好的结果。基本思想是不仅估计帧之间的摄像机运动,而且估计帧捕获期间的运动。使用图像对应关系估计运动,并据此制定和解决非线性优化问题。滚动快门图像中的所有行都在不同的时间成像,并且当运动已知时,每行都可以转换到其后退位置。当使用诸如Microsoft Kinect之类的深度传感器时,情况也是如此,本文描述了如何估计其3D运动以及如何校正3D点云。在本文中,还探讨了如何使用与卷帘情况类似的技术来校正推扫帚图像。找到变换后,需要将图像重新采样到规则的网格中才能可视化。这可以通过多种方式完成,并且不同的方法已经过测试,并适用于推扫帚设置。除了卷帘快门失真之外,手持镜头通常还会晃动相机运动。结合旋转平滑技术,可以实现视频稳定化。除了这些失真之外,运动模糊对于手持摄影机来说还是一个大问题。由于相机的运动,图像会模糊,如果在弱光条件下拍摄,也会产生噪点。论文中的一项贡献是一种方法,该方法使用陀螺仪测量和特征跟踪将智能手机拍摄的几幅图像组合成一个具有较少模糊和噪点的图像。这使用户能够拍摄原本需要三脚架的照片。

著录项

  • 作者

    Ringaby, Erik;

  • 作者单位
  • 年度 2014
  • 总页数
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类

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