CVDec 4, 2018

Topological Map Extraction from Overhead Images

arXiv:1812.01497v3185 citations
Originality Highly original
AI Analysis

This addresses the need for automated large-scale map extraction in remote sensing, offering a novel approach that could improve models with geometrical constraints.

The paper tackles the problem of automatically extracting topological maps from overhead images by proposing PolyMapper, which directly predicts building footprints and road networks in vector representation, achieving performance comparable to existing online map services.

We propose a new approach, named PolyMapper, to circumvent the conventional pixel-wise segmentation of (aerial) images and predict objects in a vector representation directly. PolyMapper directly extracts the topological map of a city from overhead images as collections of building footprints and road networks. In order to unify the shape representation for different types of objects, we also propose a novel sequentialization method that reformulates a graph structure as closed polygons. Experiments are conducted on both existing and self-collected large-scale datasets of several cities. Our empirical results demonstrate that our end-to-end learnable model is capable of drawing polygons of building footprints and road networks that very closely approximate the structure of existing online map services, in a fully automated manner. Quantitative and qualitative comparison to the state-of-the-art also shows that our approach achieves good levels of performance. To the best of our knowledge, the automatic extraction of large-scale topological maps is a novel contribution in the remote sensing community that we believe will help develop models with more informed geometrical constraints.

Foundations

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

Your Notes