Dual-Feature Warping-Based Motion Model Estimation

Shiwei Li, Lu Yuan, Jian Sun, Long Quan
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引用次数: 88

Abstract

To break down the geometry assumptions of traditional motion models (e.g., homography, affine), warping-based motion model recently becomes very popular and is adopted in many latest applications (e.g., image stitching, video stabilization). With high degrees of freedom, the accuracy of model heavily relies on data-terms (keypoint correspondences). In some low-texture environments (e.g., indoor) where keypoint feature is insufficient or unreliable, the warping model is often erroneously estimated. In this paper we propose a simple and effective approach by considering both keypoint and line segment correspondences as data-term. Line segment is a prominent feature in artificial environments and it can supply sufficient geometrical and structural information of scenes, which not only helps guild to a correct warp in low-texture condition, but also prevents the undesired distortion induced by warping. The combination aims to complement each other and benefit for a wider range of scenes. Our method is general and can be ported to many existing applications. Experiments demonstrate that using dual-feature yields more robust and accurate result especially for those low-texture images.
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基于双特征翘曲的运动模型估计
为了打破传统运动模型(例如,单应性,仿射)的几何假设,基于翘曲的运动模型最近变得非常流行,并被采用在许多最新的应用中(例如,图像拼接,视频稳定)。在高度自由度下,模型的准确性严重依赖于数据项(关键点对应)。在一些低纹理环境中(如室内),关键点特征不充分或不可靠,扭曲模型经常被错误估计。本文提出了一种简单有效的方法,将关键点和线段对应作为数据项。线段是人工环境中的一个重要特征,它能提供充分的场景几何和结构信息,不仅有助于在低纹理条件下进行正确的翘曲,还能防止翘曲引起的不良变形。这种组合旨在相互补充,并在更广泛的场景中受益。我们的方法是通用的,可以移植到许多现有的应用程序中。实验表明,对于低纹理图像,使用双特征可以获得更好的鲁棒性和准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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