Low-Cost Tree Crown Dieback Estimation Using Deep Learning-Based Segmentation
M. J. Allen, D. Moreno-Fern\'andez, P. Ruiz-Benito, S. W. D. Grieve,, E. R. Lines

TL;DR
This paper demonstrates a cost-effective method using deep learning and drone imagery to accurately estimate tree crown dieback, facilitating large-scale forest health monitoring without expensive equipment.
Contribution
It introduces a novel approach combining deep learning and vegetation indices for tree dieback assessment using low-cost RGB drone data, validated in a drought-affected Mediterranean ecosystem.
Findings
High segmentation accuracy (mAP: 0.519) achieved with existing models
Vegetation index estimates correlate well with expert assessments
Robustness shown as predictions have minimal impact on dieback estimates
Abstract
The global increase in observed forest dieback, characterised by the death of tree foliage, heralds widespread decline in forest ecosystems. This degradation causes significant changes to ecosystem services and functions, including habitat provision and carbon sequestration, which can be difficult to detect using traditional monitoring techniques, highlighting the need for large-scale and high-frequency monitoring. Contemporary developments in the instruments and methods to gather and process data at large-scales mean this monitoring is now possible. In particular, the advancement of low-cost drone technology and deep learning on consumer-level hardware provide new opportunities. Here, we use an approach based on deep learning and vegetation indices to assess crown dieback from RGB aerial data without the need for expensive instrumentation such as LiDAR. We use an iterative approach to…
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Taxonomy
TopicsIndustrial Vision Systems and Defect Detection · Remote Sensing and LiDAR Applications
MethodsRegion Proposal Network · RoIAlign · Convolution · Softmax · Mask R-CNN · SPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings
