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VisDrone-DET2018: The Vision Meets Drone Object Detection in Image Challenge Results

机译:VisDrone-DET2018:视觉在影像挑战结果中遇见无人机目标检测

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Object detection is a hot topic with various applications in computer vision, e.g., image understanding, autonomous driving, and video surveillance. Much of the progresses have been driven by the availability of object detection benchmark datasets, including PASCAL VOC, ImageNet, and MS COCO. However, object detection on the drone platform is still a challenging task, due to various factors such as view point change, occlusion, and scales. To narrow the gap between current object detection performance and the real-world requirements, we organized the Vision Meets Drone (VisDrone2018) Object Detection in Image challenge in conjunction with the 15th European Conference on Computer Vision (ECCV 2018). Specifically, we release a large-scale drone-based dataset, including 8, 599 images (6,471 for training, 548 for validation, and 1,580 for testing) with rich annotations, including object bounding boxes, object categories, occlusion, truncation ratios, etc. Featuring a diverse real-world scenarios, the dataset was collected using various drone models, in different scenarios (across 14 different cities spanned over thousands of kilometres), and under various weather and lighting conditions. We mainly focus on ten object categories in object detection, i.e., pedestrian, person, car, van, bus, truck, motor, bicycle, awning-tricycle, and tricycle. Some rarely occurring special vehicles (e.g., machineshop truck, forklift truck, and tanker) are ignored in evaluation. The dataset is extremely challenging due to various factors, including large scale and pose variations, occlusion, and clutter background. We present the evaluation protocol of the VisDrone-DET2018 challenge and the comparison results of 38 detectors on the released dataset, which are publicly available on the challenge website: http://www.aiskyeye.com/. We expect the challenge to largely boost the research and development in object detection in images on drone platforms.
机译:目标检测是计算机视觉中各种应用的热门话题,例如图像理解,自动驾驶和视频监控。物体检测基准数据集的可用性推动了许多进步,包括PASCAL VOC,ImageNet和MS COCO。但是,由于各种因素(例如视点变化,遮挡和缩放),在无人机平台上进行目标检测仍然是一项艰巨的任务。为了缩小当前物体检测性能与现实要求之间的差距,我们与第15届欧洲计算机视觉会议(ECCV 2018)一起组织了视觉遇见无人机(VisDrone2018)图像中物体检测挑战赛。具体来说,我们发布了一个大型的基于无人机的数据集,其中包括8张599张图像(用于训练的6,471张图像,用于验证的548张图像以及用于测试的1,580张图像),并带有丰富的注释,包括对象边界框,对象类别,遮挡,截断率等。 。该数据集具有多种真实世界的场景,并使用各种无人机模型,在不同的场景(跨越数千公里的14个不同城市)以及在各种天气和光照条件下收集了数据集。我们主要关注对象检测中的十个对象类别,即行人,人,汽车,货车,公共汽车,卡车,汽车,自行车,遮阳棚三轮车和三轮车。在评估中忽略了一些罕见的特殊车辆(例如,机修车,叉车和油轮)。由于各种因素,包括大比例尺和姿势变化,遮挡和背景混乱,数据集极具挑战性。我们介绍了VisDrone-DET2018挑战的评估协议以及已发布数据集上38个检测器的比较结果,这些结果可在挑战网站上公开获得:http://www.aiskyeye.com/。我们预计这一挑战将极大地促进无人机平台上图像目标检测的研究与开发。

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