Enhanced Forest Inventories for Habitat Mapping: A Case Study in the Sierra Nevada Mountains of California
Maxime Turgeon, Michael Kieser, Dwight Wolfe, Bruce MacArthur

TL;DR
This study develops an Enhanced Forest Inventory combining remote sensing and ground data to create high-resolution habitat maps for wildlife conservation in California's Sierra Nevada.
Contribution
It introduces a novel EFI methodology that integrates multi-modal remote sensing with ground plots for detailed habitat mapping.
Findings
Mapped habitat suitability for California Spotted Owl and Pacific Fisher.
Identified over 25,000 acres of critical nesting and foraging habitat.
Demonstrated EFI's utility for ecosystem health monitoring and conservation planning.
Abstract
Traditional forest inventory systems, originally designed to quantify merchantable timber volume, often lack the spatial resolution and structural detail required for modern multi-resource ecosystem management. In this manuscript, we present an Enhanced Forest Inventory (EFI) and demonstrate its utility for high-resolution wildlife habitat mapping. The project area covers 270,000 acres of the Eldorado National Forest in California's Sierra Nevada. By integrating 118 ground-truth Forest Inventory and Analysis (FIA) plots with multi-modal remote sensing data (LiDAR, aerial photography, and Sentinel-2 satellite imagery), we developed predictive models for key forest attributes. Our methodology employed a two-tier segmentation approach, partitioning the landscape into approximately 575,000 reporting units with an average size of 0.5 acre to capture forest heterogeneity. We utilized an…
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Taxonomy
TopicsRemote Sensing and LiDAR Applications · Remote Sensing in Agriculture · Fire effects on ecosystems
