Embedded Dense Camera Trajectories in Multi-Video Image Mosaics by Geodesic Interpolation-based Reintegration

Lars Haalck, B. Risse
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引用次数: 3

Abstract

Dense registrations of huge image sets are still challenging due to exhaustive matchings and computationally expensive optimisations. Moreover, the resultant image mosaics often suffer from structural errors such as drift. Here, we propose a novel algorithm to generate global large-scale registrations from thousands of images extracted from multiple videos to derive high-resolution image mosaics which include full frame rate camera trajectories. Our algorithm does not require any initialisations and ensures the effective integration of all available image data by combining efficient and highly parallelised key-frame and loop-closure mechanisms with a novel geodesic interpolation-based reintegration strategy. As a consequence, global refinement can be done in a fraction of iterations compared to traditional optimisation strategies, while effectively avoiding drift and convergence towards inappropriate solutions. We compared our registration strategy with state-of-the-art algorithms and quantitative evaluations revealed millimetre spatial and high angular accuracy. Applicability is demonstrated by registering more than 110,000 frames from multiple scan recordings and provide dense camera trajectories in a globally referenced coordinate system as used for drone-based mappings, ecological studies, object tracking and land surveys.
基于测地线插值的多视频图像拼接中嵌入密集摄像机轨迹
由于详尽的匹配和计算昂贵的优化,巨大图像集的密集配准仍然具有挑战性。此外,所得到的图像拼接往往遭受结构误差,如漂移。在这里,我们提出了一种新的算法,从多个视频中提取的数千张图像中生成全局大规模配准,以获得包括全帧速率摄像机轨迹的高分辨率图像马赛克。我们的算法不需要任何初始化,并通过将高效和高度并行的关键帧和闭环机制与新颖的基于测地插值的融合策略相结合,确保所有可用图像数据的有效集成。因此,与传统的优化策略相比,全局细化可以在一小部分迭代中完成,同时有效地避免向不适当的解决方案漂移和收敛。我们将我们的配准策略与最先进的算法和定量评估进行了比较,揭示了毫米空间和高角度精度。适用性通过从多个扫描记录中注册超过110,000帧来证明,并在全球参考坐标系中提供密集的相机轨迹,用于基于无人机的映射,生态研究,目标跟踪和土地调查。
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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