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Fast topology estimation for image mosaicing using adaptive information thresholding

机译:使用自适应信息阈值的图像拼接快速拓扑估计

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摘要

Over the past decade, several image mosaicing methods have been proposed in robotic mapping and remote sensing applications. Owing to rapid developments in obtaining optical data from areas beyond human reach, there is a high demand from different science fields for creating large-area image mosaics, often using images as the only source of information. One of the most important steps in the mosaicing process is motion estimation between overlapping images to obtain the topology, i.e., the spatial relationships between images. In this paper, we propose a generic framework for feature-based image mosaicing capable of obtaining the topology with a reduced number of matching attempts and of getting the best possible trajectory estimation. Innovative aspects include the use of a fast image similarity criterion combined with a Minimum Spanning Tree (MST) solution, to obtain a tentative topology and information theory principles to decide when to update trajectory estimation. Unlike previous approaches for large-area mosaicing, our framework is able to naturally deal with the cases where time-consecutive images cannot be matched successfully, such as completely unordered sets. This characteristic also makes our approach robust to sensor failure. The performance of the method is illustrated with experimental results obtained from different challenging underwater image sequences.
机译:在过去的十年中,已经在机器人制图和遥感应用中提出了几种图像拼接方法。由于从人类无法触及的区域获取光学数据的快速发展,不同科学领域对创建大面积图像镶嵌图(通常使用图像作为唯一信息源)的需求很高。镶嵌过程中最重要的步骤之一是重叠图像之间的运动估计,以获得拓扑,即图像之间的空间关系。在本文中,我们提出了一种基于特征的图像镶嵌的通用框架,该框架能够以减少的匹配尝试次数获得拓扑并获得最佳的轨迹估计。创新方面包括将快速图像相似性标准与最小生成树(MST)解决方案结合使用,以获得暂定的拓扑结构和信息论原理,以决定何时更新轨迹估计。与以前的大面积拼接方法不同,我们的框架能够自然地处理时间连续图像无法成功匹配的情况,例如完全无序的集合。此特性也使我们的方法对传感器故障具有鲁棒性。从不同的具有挑战性的水下图像序列获得的实验结果说明了该方法的性能。

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