CVIVJul 13, 2020

OpenStreetMap: Challenges and Opportunities in Machine Learning and Remote Sensing

arXiv:2007.06277v1154 citations
Originality Synthesis-oriented
AI Analysis

This is an incremental review that highlights opportunities for improving participatory mapping and remote sensing interpretation through machine learning.

The paper reviews machine learning methods to enhance and utilize OpenStreetMap (OSM) data, addressing its heterogeneous quality and coverage issues, with applications in geosciences and remote sensing.

OpenStreetMap (OSM) is a community-based, freely available, editable map service that was created as an alternative to authoritative ones. Given that it is edited mainly by volunteers with different mapping skills, the completeness and quality of its annotations are heterogeneous across different geographical locations. Despite that, OSM has been widely used in several applications in {Geosciences}, Earth Observation and environmental sciences. In this work, we present a review of recent methods based on machine learning to improve and use OSM data. Such methods aim either 1) at improving the coverage and quality of OSM layers, typically using GIS and remote sensing technologies, or 2) at using the existing OSM layers to train models based on image data to serve applications like navigation or {land use} classification. We believe that OSM (as well as other sources of open land maps) can change the way we interpret remote sensing data and that the synergy with machine learning can scale participatory map making and its quality to the level needed to serve global and up-to-date land mapping.

Foundations

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

Your Notes