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NYC3DCars: A Dataset of 3D Vehicles in Geographic Context

机译:NYC3DCars:地理环境下的3D车辆数据集

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Geometry and geography can play an important role in recognition tasks in computer vision. To aid in studying connections between geometry and recognition, we introduce NYC3DCars, a rich dataset for vehicle detection in urban scenes built from Internet photos drawn from the wild, focused on densely trafficked areas of New York City. Our dataset is augmented with detailed geometric and geographic information, including full camera poses derived from structure from motion, 3D vehicle annotations, and geographic information from open resources, including road segmentations and directions of travel. NYC3DCars can be used to study new questions about using geometric information in detection tasks, and to explore applications of Internet photos in understanding cities. To demonstrate the utility of our data, we evaluate the use of the geographic information in our dataset to enhance a parts-based detection method, and suggest other avenues for future exploration.
机译:几何和地理可以在计算机视觉的识别任务中发挥重要作用。为了帮助研究几何与识别之间的联系,我们引入了NYC3DCars,这是一个丰富的数据集,可用于根据从野外拍摄的互联网照片构建的城市场景中的车辆检测,重点是纽约市人口稠密的地区。我们的数据集增加了详细的几何和地理信息,包括从运动结构,3D车辆注释中得出的完整相机姿态,以及从开放资源(包括路段和行进方向)中获得的地理信息。 NYC3DCars可用于研究有关在检测任务中使用几何信息的新问题,并探索互联网照片在理解城市中的应用。为了证明我们数据的实用性,我们评估了数据集中地理信息的使用,以增强基于零件的检测方法,并提出了进一步探索的其他途径。

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