SLAM-Based Navigation and Fault Resilience in a Surveillance Quadcopter with Embedded Vision Systems
SLAM-Based Navigation and Fault Resilience in a Surveillance Quadcopter with Embedded Vision Systems
We present an autonomous aerial surveillance platform, Veg, designed as a fault-tolerant quadcopter system that integrates visual SLAM for GPS-independent navigation, advanced control architecture for dynamic stability, and embedded vision modules for real-time object and face recognition. The platform features a cascaded control design with an LQR inner-loop and PD outer-loop trajectory control. It leverages ORB-SLAM3 for 6-DoF localization and loop closure, and supports waypoint-based navigation through Dijkstra path planning over SLAM-derived maps. A real-time Failure Detection and Identification (FDI) system detects rotor faults and executes emergency landing through re-routing. The embedded vision system, based on a lightweight CNN and PCA, enables onboard object detection and face recognition with high precision. The drone operates fully onboard using a Raspberry Pi 4 and Arduino Nano, validated through simulations and real-world testing. This work consolidates real-time localization, fault recovery, and embedded AI on a single platform suitable for constrained environments.
Abhishek Tyagi、Charu Gaur
航空自动化技术、自动化技术设备计算技术、计算机技术
Abhishek Tyagi,Charu Gaur.SLAM-Based Navigation and Fault Resilience in a Surveillance Quadcopter with Embedded Vision Systems[EB/OL].(2025-04-18)[2025-06-28].https://arxiv.org/abs/2504.15305.点此复制
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