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Performance Evaluation of Image-Based Location Recognition Approaches based on large-scale UAV Imagery

机译:基于大规模无人机图像的基于图像的位置识别方法的性能评估

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摘要

Recognizing the location where an image was taken, solely based on visual content, is an important problem in computer vision, robotics and remote sensing. This paper evaluates the performance of standard approaches for location recognition when applied to large-scale aerial imagery in both electro-optical (EO) and infrared (IR) domains. We present guidelines towards optimizing the performance and explore how well a standard location recognition system is suited to handle IR data. We show on three datasets that the performance of the system strongly increases if SIFT descriptors computed on Hessian-Affine regions are used instead of SURF features. Applications are widespread and include vision-based navigation, precise object geo-referencing or mapping.
机译:仅基于视觉内容来识别拍摄图像的位置是计算机视觉,机器人技术和遥感技术中的重要问题。本文评估了标准方法在电光(EO)和红外(IR)领域中应用于大型航空影像时的性能。我们提出了优化性能的指南,并探讨了标准位置识别系统适合处理IR数据的程度。我们在三个数据集上显示,如果使用在Hessian-Affine区域上计算的SIFT描述符代替SURF特征,则系统的性能将大大提高。应用广泛,包括基于视觉的导航,精确的对象地理参考或地图绘制。

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