Berio Fortini, L., 2023, High-Resolution Land Cover Maps of Lāna‘i, Hawai‘i, 2020: U.S. Geological Survey data release, https://doi.org/10.5066/P94TS6W6.
Summary
This dataset provides high-resolution, species-specific land cover maps for the Hawaiian island of Lāna'i based on 2020 WorldView-2 satellite imagery. Machine learning models were trained on extensive ground control polygons and points. The land cover maps capture the distribution and diversity of vegetation with high accuracy to support conservation planning and monitoring. This data release consists of two child items, one containing the field and expert collected ground control data used to train our models, and another consisting of resulting land cover maps for the island of Lāna‘i. The research effort that generated these input data, and products are carefully described in the associated manuscript Berio Fortini et al. 2024. [...]
Summary
This dataset provides high-resolution, species-specific land cover maps for the Hawaiian island of Lāna'i based on 2020 WorldView-2 satellite imagery. Machine learning models were trained on extensive ground control polygons and points. The land cover maps capture the distribution and diversity of vegetation with high accuracy to support conservation planning and monitoring. This data release consists of two child items, one containing the field and expert collected ground control data used to train our models, and another consisting of resulting land cover maps for the island of Lāna‘i. The research effort that generated these input data, and products are carefully described in the associated manuscript Berio Fortini et al. 2024. Full citation is listed in the larger work section of this XML file. Outputs included in this page include: Map 1 - Species-specific land cover map: This raster depicts the distribution of 15 species-specific vegetation classes across the island of Lāna‘i at 2m resolution. It represents the final selected neural network model predictions with expert-adjusted posterior probabilities. Each pixel is assigned to the most likely species-specific class based on the model. Overall and class-specific accuracy assessments indicate this map has generally over 95% accuracy. It provides detailed species-level vegetation mapping to support conservation planning and monitoring. Map 2 - Community-specific land cover map: This raster depicts the distribution of broader community-level vegetation classes across Lāna‘i. To generate this map, the species-specific class probabilities were summed to get total probability of membership in each defined community class. Each pixel was then assigned to the community class with the highest probability. This generalized map allows for an assessment of vegetation patterns at a coarser categorical level across the island. Map 3 - Mixed hierarchical land cover map: This raster integrates the species-specific and community classifications using a hierarchical approach based on classification certainty. A 0.66 probability threshold was applied, with pixels assigned the finest species-specific class as long as the probability exceeded the threshold. Pixels below the threshold were assigned to the broader community class meeting the threshold. This approach displays the most detailed class possible given a minimum confidence, providing a map that balances specificity and certainty. Map 4 - Class membership probability maps: This raster stack contains 15 probability layers representing the pixel-level predicted probability of membership in each species-specific vegetation class from 0 to 1. These probability layers can be used to generate class membership uncertainty maps or probabilistic class cover maps from the model outputs. They provide additional information beyond the discrete categorial land cover assignments. Please note that to reduce the inherent 'salt and pepper' noise in the final land cover classification maps above, we applied a 3x3 pixel moving window majority filter to the final classification results.
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Related External Resources
Type: Related Primary Publication
Lucas Berio Fortini, Qi Chen, Yoko Uyehara, Kari Bogner, Jonathan Sprague & Rachel Sprague (2024) Fine-resolution land cover mapping over large and mountainous areas for Lāna‘i, Hawaii using posterior probabilities, and expert knowledge, International Journal of Remote Sensing, 45:6, 1949-1971, https://doi.org/10.1080/01431161.2024.2321465.
This land cover dataset enables highly detailed vegetation mapping to track the spread of invasive species, guide conservation actions, assess ungulate damage, and monitor ecosystem changes over time on Lāna‘i. The fine-scale maps can also inform erosion control, carbon inventory, and climate change planning. Their accuracy and resolution surpass existing products to aid research and management across taxa in this topographically complex island ecosystem.