FlyPose: Towards Robust Human Pose Estimation From Aerial Views
By: Hassaan Farooq, Marvin Brenner, Peter St\ütz
Potential Business Impact:
Lets drones see and track people from above.
Unmanned Aerial Vehicles (UAVs) are increasingly deployed in close proximity to humans for applications such as parcel delivery, traffic monitoring, disaster response and infrastructure inspections. Ensuring safe and reliable operation in these human-populated environments demands accurate perception of human poses and actions from an aerial viewpoint. This perspective challenges existing methods with low resolution, steep viewing angles and (self-)occlusion, especially if the application demands realtime feasibile models. We train and deploy FlyPose, a lightweight top-down human pose estimation pipeline for aerial imagery. Through multi-dataset training, we achieve an average improvement of 6.8 mAP in person detection across the test-sets of Manipal-UAV, VisDrone, HIT-UAV as well as our custom dataset. For 2D human pose estimation we report an improvement of 16.3 mAP on the challenging UAV-Human dataset. FlyPose runs with an inference latency of ~20 milliseconds including preprocessing on a Jetson Orin AGX Developer Kit and is deployed onboard a quadrotor UAV during flight experiments. We also publish FlyPose-104, a small but challenging aerial human pose estimation dataset, that includes manual annotations from difficult aerial perspectives: https://github.com/farooqhassaan/FlyPose.
Similar Papers
Point2Pose: A Generative Framework for 3D Human Pose Estimation with Multi-View Point Cloud Dataset
CV and Pattern Recognition
Helps computers understand how people move in 3D.
CNN-Based Camera Pose Estimation and Localisation of Scan Images for Aircraft Visual Inspection
Robotics
Lets planes get checked for damage faster.
Physics Informed Human Posture Estimation Based on 3D Landmarks from Monocular RGB-Videos
CV and Pattern Recognition
Makes exercise apps understand your body better.