Hossain Sabir, Lee Deok-Jin
School of Mechanical & Convergence System Engineering, Kunsan National University, 558 Daehak-ro, Gunsan 54150, Korea.
Sensors (Basel). 2019 Jul 31;19(15):3371. doi: 10.3390/s19153371.
In recent years, demand has been increasing for target detection and tracking from aerial imagery via drones using onboard powered sensors and devices. We propose a very effective method for this application based on a deep learning framework. A state-of-the-art embedded hardware system empowers small flying robots to carry out the real-time onboard computation necessary for object tracking. Two types of embedded modules were developed: one was designed using a Jetson TX or AGX Xavier, and the other was based on an Intel Neural Compute Stick. These are suitable for real-time onboard computing power on small flying drones with limited space. A comparative analysis of current state-of-the-art deep learning-based multi-object detection algorithms was carried out utilizing the designated GPU-based embedded computing modules to obtain detailed metric data about frame rates, as well as the computation power. We also introduce an effective target tracking approach for moving objects. The algorithm for tracking moving objects is based on the extension of simple online and real-time tracking. It was developed by integrating a deep learning-based association metric approach with simple online and real-time tracking (Deep SORT), which uses a hypothesis tracking methodology with Kalman filtering and a deep learning-based association metric. In addition, a guidance system that tracks the target position using a GPU-based algorithm is introduced. Finally, we demonstrate the effectiveness of the proposed algorithms by real-time experiments with a small multi-rotor drone.
近年来,使用机载有源传感器和设备通过无人机从航空图像中进行目标检测和跟踪的需求一直在增加。我们基于深度学习框架为此应用提出了一种非常有效的方法。一种先进的嵌入式硬件系统使小型飞行机器人能够执行目标跟踪所需的实时机载计算。开发了两种类型的嵌入式模块:一种是使用Jetson TX或AGX Xavier设计的,另一种是基于英特尔神经计算棒的。这些适用于空间有限的小型飞行无人机上的实时机载计算能力。利用指定的基于GPU的嵌入式计算模块对当前基于深度学习的多目标检测算法进行了比较分析,以获得有关帧率以及计算能力的详细度量数据。我们还介绍了一种针对移动目标的有效目标跟踪方法。跟踪移动目标的算法基于简单在线实时跟踪的扩展。它是通过将基于深度学习的关联度量方法与简单在线实时跟踪(Deep SORT)集成而开发的,Deep SORT使用带有卡尔曼滤波的假设跟踪方法和基于深度学习的关联度量。此外,还介绍了一种使用基于GPU的算法跟踪目标位置的制导系统。最后,我们通过使用小型多旋翼无人机进行实时实验来证明所提出算法的有效性。