We present results from testing a multi-modal sensor system (consisting of a camera, LiDAR, and positioning system) for real-time object detection and geolocation. The system’s eventual purpose is to assess damage and detect foreign objects on a disrupted airfield surface to reestablish a minimum airfield operating surface. It uses an AI to detect objects and generate bounding boxes or segmentation masks in data acquired with a high-resolution area scan camera. It locates the detections in the local, sensor-centric coordinate system in real time using returns from a low-cost commercial LiDAR system. This is accomplished via an intrinsic camera calibration together with a 3D extrinsic calibration of the camera- LiDAR pair. A coordinate transform service uses data from a navigation system (comprising an inertial measurement unit and global positioning system) to transform local coordinates of the detections obtained with the AI and calibrated sensor pair into earth-centered coordinates. The entire sensor system is mounted on a pan-tilt unit to achieve 360-degree perception. All data acquisition and computation are performed on a low SWAP-C system-on-module that includes an integrated GPU. Computer vision code runs real-time on the GPU and has been accelerated using CUDA. We have chosen Robot Operating System (ROS1 at present but porting to ROS2 in the near term) as the control framework for the system. All computer vision, motion, and transform services are configured as ROS nodes.
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