论文标题
广角图像纠正:调查
Wide-angle Image Rectification: A Survey
论文作者
论文摘要
捕获比狭窄的FOV摄像机更大的场景区域的广阔视野(FOV)摄像机都用于许多应用程序中,包括3D重建,自动驾驶和视频监视。但是,广角图像包含违反针孔摄像机模型的假设的扭曲,从而导致对象失真,估计场景距离,区域和方向的困难,并防止使用未经货架的深层模型,该模型训练了未经遗传的图像,用于下游计算机视觉任务。旨在纠正这些扭曲的图像矫正可以解决这些问题。在本文中,我们全面调查了从转换模型到整流方法的广角图像纠正的进展。具体来说,我们首先介绍了在不同方法中使用的相机模型的详细说明和讨论。然后,我们总结了几个失真模型,包括径向失真和投影失真。接下来,我们回顾了基于传统的几何图像整流方法和基于深度学习的方法,其中前者将失真参数估计作为优化问题,后者通过利用深神经网络的力量来将其视为回归问题。我们评估了公共数据集上最新方法的性能,并表明,尽管两种方法都可以取得良好的结果,但这些方法仅适用于特定的相机模型和失真类型。我们还提供了强大的基线模型,并对合成数据集和现实世界广角图像的不同失真模型进行了经验研究。最后,我们讨论了一些潜在的研究方向,预计将来将进一步推进这一领域。
Wide field-of-view (FOV) cameras, which capture a larger scene area than narrow FOV cameras, are used in many applications including 3D reconstruction, autonomous driving, and video surveillance. However, wide-angle images contain distortions that violate the assumptions underlying pinhole camera models, resulting in object distortion, difficulties in estimating scene distance, area, and direction, and preventing the use of off-the-shelf deep models trained on undistorted images for downstream computer vision tasks. Image rectification, which aims to correct these distortions, can solve these problems. In this paper, we comprehensively survey progress in wide-angle image rectification from transformation models to rectification methods. Specifically, we first present a detailed description and discussion of the camera models used in different approaches. Then, we summarize several distortion models including radial distortion and projection distortion. Next, we review both traditional geometry-based image rectification methods and deep learning-based methods, where the former formulate distortion parameter estimation as an optimization problem and the latter treat it as a regression problem by leveraging the power of deep neural networks. We evaluate the performance of state-of-the-art methods on public datasets and show that although both kinds of methods can achieve good results, these methods only work well for specific camera models and distortion types. We also provide a strong baseline model and carry out an empirical study of different distortion models on synthetic datasets and real-world wide-angle images. Finally, we discuss several potential research directions that are expected to further advance this area in the future.