MapForest: A Modular Field Robotics System for Forest Mapping and Invasive Species Localization

arXiv cs.RO / 3/25/2026

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Key Points

  • MapForest is a modular field robotics system designed to generate GIS-ready maps for invasive tree species using multi-modal sensing in hard-to-access forest environments where GNSS is degraded.
  • The system combines a compact, platform-agnostic sensing payload (usable on UAV, bicycle, or backpack platforms) with a software pipeline for LiDAR-inertial mapping, onboard RGB-based invasive-species detection, and georeferenced map generation.
  • To handle GNSS-intermittent conditions, MapForest enhances LiDAR-inertial mapping with covariance-aware GNSS factors and robust loss kernels, improving trajectory estimation reliability.
  • A trained RGB object detector targets Tree-of-Heaven (Ailanthus altissima), and detections are fused with the reconstructed map to produce geospatial outputs for downstream decision-making.
  • Evaluations on a dataset collected across six urban/park/trail/forest sites report a 1.95 m trajectory deviation over 1.2 km and an F1 score of 0.653 for detection, with datasets and tooling released for reproducible research.

Abstract

Monitoring and controlling invasive tree species across large forests, parks, and trail networks is challenging due to limited accessibility, reliance on manual scouting, and degraded under-canopy GNSS. We present MapForest, a modular field robotics system that transforms multi-modal sensor data into GIS-ready invasive-species maps. Our system features: (i) a compact, platform-agnostic sensing payload that can be rapidly mounted on UAV, bicycle, or backpack platforms, and (ii) a software pipeline comprising LiDAR-inertial mapping, image-based invasive-species detection, and georeferenced map generation. To ensure reliable operation in GNSS-intermittent environments, we enhance a LiDAR-inertial mapping backbone with covariance-aware GNSS factors and robust loss kernels. We train an object detector to detect the Tree-of-Heaven (Ailanthus altissima) from onboard RGB imagery and fuse detections with the reconstructed map to produce geospatial outputs suitable for downstream decision making. We collected a dataset spanning six sites across urban environments, parks, trails, and forests to evaluate individual system modules, and report end-to-end results on two sites containing Tree-of-Heaven. The enhanced mapping module achieved a trajectory deviation error of 1.95 m over a 1.2 km forest traversal, and the Tree-of-Heaven detector achieved an F1 score of 0.653. The datasets and associated tooling are released to support reproducible research in forest mapping and invasive-species monitoring.