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Vehicle Position Estimation with Aerial Imagery from Unmanned Aerial Vehicles

机译:车辆位置估计与无人驾驶飞行器的空中图像

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The availability of real-world data is a key element for novel developments in the fields of automotive and traffic research. Aerial imagery has the major advantage of recording multiple objects simultaneously and overcomes limitations such as occlusions. However, there are only few data sets available. This work describes a process to estimate a precise vehicle position from aerial imagery. A robust object detection is crucial for reliable results, hence the state-of-the-art deep neural network Mask-RCNN is applied for that purpose. Two training data sets are employed: The first one is optimized for detecting the test vehicle, while the second one consists of randomly selected images recorded on public roads. To reduce errors, several aspects are accounted for, such as the drone movement and the perspective projection from a photograph. The estimated position is comapared with a reference system installed in the test vehicle. It is shown, that a mean accuracy of 20 cm can be achieved with flight altitudes up to 100 m, Full-HD resolution and a frame-by-frame detection. A reliable position estimation is the basis for further data processing, such as obtaining additional vehicle state variables. The source code, training weights, labeled data and example videos are made publicly available. This supports researchers to create new traffic data sets with specific local conditions.
机译:现实世界数据的可用性是汽车和交通研究领域的新颖发展的关键要素。空中图像具有同时记录多个物体的主要优点,并克服诸如闭塞等限制。但是,只有很少的数据集可用。这项工作描述了一种从航拍图像估计精确的车辆位置的过程。坚固的物体检测对于可靠的结果至关重要,因此应用了最先进的深神经网络掩模-RCNN。采用两个训练数据集:第一个被优化用于检测测试车辆,而第二个是由记录在公共道路上的随机选择的图像组成。为了减少错误,占若干方面,例如从照片中的无人机运动和透视投影。估计位置与安装在测试车辆中的参考系统进行配置。示出了,通过飞行高达100米,全高清分辨率和逐帧检测,可以实现20cm的平均精度。可靠的位置估计是进一步数据处理的基础,例如获取额外的车辆状态变量。源代码,培训权重,标记数据和示例视频是公开可用的。这支持研究人员创建具有特定本地条件的新流量数据集。

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