基于视觉的无人机使用模糊控制器进行实时物体定位

Ping-Sheng Wang, Chien-Hung Lin, Cheng-Ta Chuang
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引用次数: 0

摘要

本研究提出了一种具有视觉识别和跟踪能力的无人机系统,以解决无人机通信带宽有限的问题。该系统可在飞行过程中锁定目标,并将目标的简单特征传输到地面站,从而减少对通信带宽的需求。我们使用 RealFlight 作为仿真环境来验证所提出的无人机算法。系统的核心组件包括用于目标跟踪的 DeepSORT 和 MobileNet 轻量级模型。设计的模糊控制器使系统能够调整无人机的电机,逐渐将锁定的目标移动到画面中心,并保持连续跟踪。此外,本研究还引入了信道和空间可靠性跟踪(CSRT),从多目标跟踪切换到单目标跟踪,并采用多线程技术提高系统的执行速度。实验结果表明,该系统能在大约 1.5 秒内将目标精确调整到帧中心,精度保持在 ±0.5 度以内。在 Jetson Xavier NX 嵌入式平台上,多目标跟踪器的平均帧速率(FPS)仅为 1.37,标准偏差为 1.05。相比之下,单目标跟踪器 CSRT 有了显著提高,平均帧速率达到 9.77,标准偏差为 1.86。这项研究为无人机系统的视觉跟踪提供了一个有效的解决方案,既高效又节省通信带宽。嵌入式平台的验证突出了其实用性和性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-Time Object Localization Using a Fuzzy Controller for a Vision-Based Drone
This study proposes a drone system with visual identification and tracking capabilities to address the issue of limited communication bandwidth for drones. This system can lock onto a target during flight and transmit its simple features to the ground station, thereby reducing communication bandwidth demands. RealFlight is used as the simulation environment to validate the proposed drone algorithm. The core components of the system include DeepSORT and MobileNet lightweight models for target tracking. The designed fuzzy controller enables the system to adjust the drone’s motors, gradually moving the locked target to the center of the frame and maintaining continuous tracking. Additionally, this study introduces channel and spatial reliability tracking (CSRT) switching from multi-object to single-object tracking and multithreading technology to enhance the system’s execution speed. The experimental results demonstrate that the system can accurately adjust the target to the frame’s center within approximately 1.5 s, maintaining precision within ±0.5 degrees. On the Jetson Xavier NX embedded platform, the average frame rate (FPS) for the multi-object tracker was only 1.37, with a standard deviation of 1.05. In contrast, the single-object tracker CSRT exhibited a significant improvement, achieving an average FPS of 9.77 with a standard deviation of 1.86. This study provides an effective solution for visual tracking in drone systems that is efficient and conserves communication bandwidth. The validation of the embedded platform highlighted its practicality and performance.
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