Mokayed Hamam, Ulehla Christián, Shurdhaj Elda, Nayebiastaneh Amirhossein, Alkhaled Lama, Hagner Olle, Hum Yan Chai
Electrical and Space Engineering, Luleå University of Technology, 97187 Luleå, Sweden.
Smartplanes, Jävre, 94494 Piteå Municipality, Sweden.
Sensors (Basel). 2024 Jun 18;24(12):3938. doi: 10.3390/s24123938.
This paper addresses the critical need for advanced real-time vehicle detection methodologies in Vehicle Intelligence Systems (VIS), especially in the context of using Unmanned Aerial Vehicles (UAVs) for data acquisition in severe weather conditions, such as heavy snowfall typical of the Nordic region. Traditional vehicle detection techniques, which often rely on custom-engineered features and deterministic algorithms, fall short in adapting to diverse environmental challenges, leading to a demand for more precise and sophisticated methods. The limitations of current architectures, particularly when deployed in real-time on edge devices with restricted computational capabilities, are highlighted as significant hurdles in the development of efficient vehicle detection systems. To bridge this gap, our research focuses on the formulation of an innovative approach that combines the fractional B-spline wavelet transform with a tailored U-Net architecture, operational on a Raspberry Pi 4. This method aims to enhance vehicle detection and localization by leveraging the unique attributes of the NVD dataset, which comprises drone-captured imagery under the harsh winter conditions of northern Sweden. The dataset, featuring 8450 annotated frames with 26,313 vehicles, serves as the foundation for evaluating the proposed technique. The comparative analysis of the proposed method against state-of-the-art detectors, such as YOLO and Faster RCNN, in both accuracy and efficiency on constrained devices, emphasizes the capability of our method to balance the trade-off between speed and accuracy, thereby broadening its utility across various domains.
本文探讨了车辆智能系统(VIS)中对先进实时车辆检测方法的迫切需求,特别是在使用无人机(UAV)在恶劣天气条件下进行数据采集的背景下,例如北欧地区典型的大雪天气。传统的车辆检测技术通常依赖于定制设计的特征和确定性算法,在适应各种环境挑战方面存在不足,因此需要更精确、更复杂的方法。当前架构的局限性,尤其是在具有受限计算能力的边缘设备上实时部署时,被视为高效车辆检测系统开发中的重大障碍。为了弥补这一差距,我们的研究重点是制定一种创新方法,将分数B样条小波变换与定制的U-Net架构相结合,在树莓派4上运行。该方法旨在通过利用NVD数据集的独特属性来增强车辆检测和定位,该数据集包含瑞典北部严冬条件下无人机拍摄的图像。该数据集有8450个带注释的帧,包含26313辆车辆,为评估所提出的技术奠定了基础。在受限设备上,将所提出的方法与YOLO和Faster RCNN等先进检测器在准确性和效率方面进行的比较分析,强调了我们的方法在平衡速度和准确性之间权衡的能力,从而扩大了其在各个领域的应用。