Understanding Representation Gaps Across Scales in Tropical Tree Species Classification from Drone Imagery
arXiv cs.CV / 4/28/2026
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Key Points
- Tropical tree species classification from UAV (drone) imagery is still difficult because high biodiversity and visual similarity among species persist at typical image resolutions, even though smartphone/citizen-science close-ups work well.
- The study evaluates existing approaches using paired top-view (coarser) and close-up (higher-resolution) UAV images from a species-rich tropical forest, comparing vision foundation models to in-domain generalist plant recognition models via fine-tuning.
- Results show classification accuracy is consistently higher on close-up images than on top-view aerial images, and the accuracy gap becomes larger for rare species.
- The authors propose using self-supervised representation alignment to connect representations across spatial scales, aiming to inject fine-grained detail from close-ups into canopy-level (top-view) classification models.
- If effective, the method could improve large-scale monitoring of tropical forest biodiversity by leveraging limited high-resolution close-up UAV data to enhance canopy-level estimates.
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