上下文丰富的卫星图像数据集与停车场检测方法

Yifang Yin, Wenmiao Hu, An Tran, H. Kruppa, Roger Zimmermann, See-Kiong Ng
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引用次数: 2

摘要

从卫星图像中自动检测地理信息一直是一个基本但具有挑战性的问题,其目的是减少人类注释者在维护最新数字地图方面的手工工作。目前有几个公开可用的高分辨率卫星图像数据集。然而,相关的ground-truth注释仅限于道路、建筑物和土地使用,而其他地理对象或属性的注释大多不可用。为了弥补这一差距,我们提出了Grab-Pklot,这是第一个用于停车场检测的高分辨率和上下文丰富的卫星图像数据集。我们的数据集由1344张卫星图像和新加坡停车场的地面真实注释组成。由于停车场大多与其他地理对象共同出现,我们将数据集中的每张卫星图像与周围的道路和建筑物的上下文信息联系起来,以多通道图像的格式给出。此外,我们提出了一种基于融合的分割方法,以证明通过建模停车场与其他地理对象之间的相关性可以提高停车场检测精度。在我们的数据集上进行的实验提供了基线结果,以及对卫星图像中停车场检测的挑战和机遇的新见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Context-enriched Satellite Imagery Dataset and an Approach for Parking Lot Detection
Automatic detection of geoinformation from satellite images has been a fundamental yet challenging problem, which aims to reduce the manual effort of human annotators in maintaining an up-to-date digital map. There are currently several high-resolution satellite imagery datasets that are publicly available. However, the associated ground-truth annotations are limited to road, building, and land use, while the annotations of other geographic objects or attributes are mostly not available. To bridge the gap, we present Grab-Pklot, the first high-resolution and context-enriched satellite imagery dataset for parking lot detection. Our dataset consists of 1344 satellite images with the ground-truth annotations of carparks in Singapore. Motivated by the observation that carparks are mostly co-appear with other geographic objects, we associate each satellite image in our dataset with the surrounding contextual information of road and building, given in the format of multi-channel images. As a side contribution, we present a fusion-based segmentation approach to demonstrate that the parking lot detection accuracy can be improved by modeling the correlations between parking lots and other geographic objects. Experiments on our dataset provide baseline results as well as new insights into the challenges and opportunities in parking lot detection from satellite images.
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