Active Human Pose Estimation via an Autonomous UAV Agent
Jingxi Chen, Botao He, Chahat Deep Singh, Cornelia Fermuller, Yiannis, Aloimonos

TL;DR
This paper presents an autonomous UAV system that actively moves to optimal viewpoints for improved 2D human pose estimation, integrating NeRF-based data generation, error estimation, and motion planning.
Contribution
It introduces a novel integrated framework combining NeRF data synthesis, view error prediction, and motion planning for active human pose estimation from UAVs.
Findings
Enhanced pose estimation accuracy from optimal viewpoints
Effective UAV navigation considering physical constraints
Robust data generation for diverse scenarios
Abstract
One of the core activities of an active observer involves moving to secure a "better" view of the scene, where the definition of "better" is task-dependent. This paper focuses on the task of human pose estimation from videos capturing a person's activity. Self-occlusions within the scene can complicate or even prevent accurate human pose estimation. To address this, relocating the camera to a new vantage point is necessary to clarify the view, thereby improving 2D human pose estimation. This paper formalizes the process of achieving an improved viewpoint. Our proposed solution to this challenge comprises three main components: a NeRF-based Drone-View Data Generation Framework, an On-Drone Network for Camera View Error Estimation, and a Combined Planner for devising a feasible motion plan to reposition the camera based on the predicted errors for camera views. The Data Generation…
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Taxonomy
TopicsVideo Surveillance and Tracking Methods · Human Pose and Action Recognition · Gait Recognition and Analysis
