Using Path Planning Algorithms and Digital Twin Simulators to Collect Synthetic Training Dataset for Drone Autonomous Navigation

Ismail Ryad, Marwan Zidan, Nadien Rashad, Dina Bakr, Nadeen Bakr, Nada Yehia, Yara Ismail, Mohamed Abdelsalam, Ashraf Salem
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Abstract

There is a major challenge in collecting real-world data for training the AI Agents of self-driving Cars, Drones, and Automated Guided Vehicles (AGVs). The process is slow and expensive, since the data must be reprocessed and correctly labeled before use. Furthermore, it is difficult to collect data for corner cases, especially dangerous scenarios that lead to accidents. Another challenge is the distribution of data that we use to train the model to guarantee optimal results without fitting problems or training with meaningless or redundant data. In this paper, we present a novel methodology to use path planning algorithms to generate and label the dataset needed for training AI agents. Our methodology is demonstrated with A* path planning algorithm and Microsoft Airsim Drone Simulator, which eases the obtainment of the required data for creating the obstacles grid and provides the tools needed for simulating the drone's movement.
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基于路径规划算法和数字孪生模拟器的无人机自主导航综合训练数据采集
收集真实世界的数据来训练自动驾驶汽车、无人机和自动导引车(agv)的人工智能代理是一个重大挑战。这个过程缓慢而昂贵,因为数据在使用前必须重新处理并正确标记。此外,很难收集极端情况的数据,特别是导致事故的危险情况。另一个挑战是我们用来训练模型的数据的分布,以保证没有拟合问题或无意义或冗余数据训练的最佳结果。在本文中,我们提出了一种新的方法,使用路径规划算法来生成和标记训练人工智能代理所需的数据集。我们的方法用A*路径规划算法和微软Airsim无人机模拟器进行了演示,这简化了创建障碍物网格所需数据的获取,并提供了模拟无人机运动所需的工具。
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