Orić Mihaela, Galić Vlatko, Novoselnik Filip
Protostar Labs, HR31551 Belišće, Croatia.
Data Brief. 2024 Feb 6;53:110105. doi: 10.1016/j.dib.2024.110105. eCollection 2024 Apr.
Vehicle detection is a very important aspect of computer vision application to aerial and satellite imagery, facilitating activities such as instance counting, velocity estimation, traffic predictions, etc. The feasibility of accurate vehicle detection often depends on limited training datasets, requiring a lot of manual work in collection and annotation tasks. Furthermore, there are no known publicly available datasets. Our aim was to construct a pipeline for synthetic dataset generation from aerial imagery and 3D models in Blender software. The dataset generation pipeline consists of seven steps and results in a wished number of images with bounding boxes in YOLO and coco formats. This synthetic dataset has been produced following the steps described in this pipeline. It consists of 5000 2048 × 2048 images with cars inserted into the roads and highways at the images without cars from all over the world. We believe that this dataset and the respective pipeline might be of great importance for vehicle detection, facilitating the customizability of the models to specific needs and context.
车辆检测是计算机视觉应用于航空和卫星图像的一个非常重要的方面,它有助于进行诸如实例计数、速度估计、交通预测等活动。准确进行车辆检测的可行性通常取决于有限的训练数据集,这在数据收集和标注任务中需要大量的人工工作。此外,目前还没有已知的公开可用数据集。我们的目标是构建一个管道,用于在Blender软件中从航空图像和3D模型生成合成数据集。数据集生成管道由七个步骤组成,并生成所需数量的带有YOLO和coco格式边界框的图像。这个合成数据集是按照本管道中描述的步骤生成的。它由5000张2048×2048的图像组成,在来自世界各地没有汽车的图像中的道路和高速公路上插入了汽车。我们相信,这个数据集和相应的管道对于车辆检测可能非常重要,有助于使模型能够根据特定需求和背景进行定制。