论文标题
Airound和CV-BRCT:用于场景分类的新型多视图数据集
AiRound and CV-BrCT: Novel Multi-View Datasets for Scene Classification
论文作者
论文摘要
不可否认的是,空中/卫星图像可以为各种任务提供有用的信息。但是,由于这些图像总是从上面看,因此某些应用程序可以从场景的其他视图(例如地面图像)提供的互补信息中受益。尽管有大量的公共存储库用于地理报道的照片和航空图像,但缺乏基准数据集,这些数据集允许开发用于利用空中/地面图像的益处和互补性的方法。在本文中,我们提出了两个新的公开数据集,名为\ thedataset〜和Cv-Brct。第一个包含来自同一地理坐标的图像的三联,并从世界各地提取了不同的视角。每个三重态由空中RGB图像,地面透视图像和Sentinel-2样本组成。第二个数据集包含从巴西东南部提取的一对空中和街道级图像。我们使用早期和晚融合设计了有关多视图场景分类的广泛实验。进行了此类实验,以表明可以使用多视图数据来增强图像分类。
It is undeniable that aerial/satellite images can provide useful information for a large variety of tasks. But, since these images are always looking from above, some applications can benefit from complementary information provided by other perspective views of the scene, such as ground-level images. Despite a large number of public repositories for both georeferenced photographs and aerial images, there is a lack of benchmark datasets that allow the development of approaches that exploit the benefits and complementarity of aerial/ground imagery. In this paper, we present two new publicly available datasets named \thedataset~and CV-BrCT. The first one contains triplets of images from the same geographic coordinate with different perspectives of view extracted from various places around the world. Each triplet is composed of an aerial RGB image, a ground-level perspective image, and a Sentinel-2 sample. The second dataset contains pairs of aerial and street-level images extracted from southeast Brazil. We design an extensive set of experiments concerning multi-view scene classification, using early and late fusion. Such experiments were conducted to show that image classification can be enhanced using multi-view data.