CVMar 14, 2025

Aerial Vision-and-Language Navigation with Grid-based View Selection and Map Construction

arXiv:2503.11091v18 citationsh-index: 8
Originality Incremental advance
AI Analysis

This addresses aerial navigation challenges for unmanned aerial vehicles, representing an incremental improvement over prior methods.

The paper tackles the problem of aerial vision-and-language navigation by proposing a grid-based view selection framework and map construction to handle complex 3D environments and coupled vertical-horizontal actions, achieving superior performance in experiments.

Aerial Vision-and-Language Navigation (Aerial VLN) aims to obtain an unmanned aerial vehicle agent to navigate aerial 3D environments following human instruction. Compared to ground-based VLN, aerial VLN requires the agent to decide the next action in both horizontal and vertical directions based on the first-person view observations. Previous methods struggle to perform well due to the longer navigation path, more complicated 3D scenes, and the neglect of the interplay between vertical and horizontal actions. In this paper, we propose a novel grid-based view selection framework that formulates aerial VLN action prediction as a grid-based view selection task, incorporating vertical action prediction in a manner that accounts for the coupling with horizontal actions, thereby enabling effective altitude adjustments. We further introduce a grid-based bird's eye view map for aerial space to fuse the visual information in the navigation history, provide contextual scene information, and mitigate the impact of obstacles. Finally, a cross-modal transformer is adopted to explicitly align the long navigation history with the instruction. We demonstrate the superiority of our method in extensive experiments.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes