Skip to main content
Enterprise AI Analysis: Single-tree Delineation by Instance Segmentation Using Drone-based Lidar and Multispectral Imagery: a Comparative Study in Various Forest Structures

AI-POWERED ANALYSIS

Single-tree Delineation by Instance Segmentation Using Drone-based Lidar and Multispectral Imagery: a Comparative Study in Various Forest Structures

This study demonstrates the superiority of deep-learning-based tree segmentation (Mask R-CNN) over traditional methods in complex, dense forest structures. Using drone-based lidar and multispectral imagery, the Mask R-CNN model achieved an average F1 score of 70% (range 36–100%) across various forest types. Performance was notably better in coniferous areas (81%) than deciduous areas (63%), influenced by higher stem densities. Leaf-off conditions improved accuracy by up to 20%. The lidar-derived Canopy Height Model (CHM) was the most critical input, with CHM-based variants outperforming RGB and multispectral channel combinations. Mask R-CNN consistently delivered higher segmentation quality (6-15% better mean IoU) and pixel-precise crown masks compared to baseline methods, despite challenges in very high-density forests or with smaller trees.

Executive Impact

Our AI-driven analysis of Single-tree Delineation by Instance Segmentation Using Drone-based Lidar and Multispectral Imagery: a Comparative Study in Various Forest Structures reveals key metrics crucial for strategic decision-making.

0 Average F1 Score for Tree Segmentation
0 Improvement Over Baseline Methods
0 Accuracy in Coniferous Forest Areas

Deep Analysis & Enterprise Applications

Select a topic to dive deeper, then explore the specific findings from the research, rebuilt as interactive, enterprise-focused modules.

Overall Performance

The Mask R-CNN model consistently outperformed traditional baseline methods (NCut, Li, Silva, WS) across diverse forest structures, achieving an average F1 score of 70%. This highlights the strong capability of deep learning in handling complex environmental data.

Input Data Impact

Lidar-derived Canopy Height Models (CHM) were identified as the most critical input, resulting in up to 10% better F1 scores than RGB-based variants in the Bavarian Forest. Multispectral combinations (CIR, CHMIRIR2) contributed only marginally, indicating CHM's superior value for structural information in tree delineation.

Forest Type & Density

Segmentation accuracy varied significantly with forest type and stem density. Coniferous areas yielded F1 scores of 81%, nearly 20% higher than deciduous areas (63%), partly due to higher stem densities (~1000 stems/ha for both types). The model showed robust performance even in high-density forests but faced challenges with very dense or smaller trees.

Leaf Phenology

Results showed significantly better performance (up to 20% higher F1 scores) under leaf-off conditions compared to leaf-on. This suggests that the absence of foliage occlusion allows for clearer structural detection, improving segmentation accuracy.

Segmentation Quality

Mask R-CNN consistently produced significantly better segmentation quality, with mean IoU values 6-15% higher than baseline methods (NCut). This indicates more precise and accurate crown delineations, crucial for detailed forest inventory and management.

70% Average F1 Score for Mask R-CNN Across All Study Areas

Enterprise Process Flow

Lidar Data Acquisition
Multispectral Data Acquisition
Data Fusion (CHM, RGB, CIR, NIR)
Mask R-CNN Training & Validation
Single-Tree Segmentation
Accuracy Evaluation

Mask R-CNN vs. Baseline Methods (F1 Score Improvement)

Method Mask R-CNN (F1 Score) Baseline Methods (Max F1 Score) Improvement
Coniferous Forest (N1/N2) 82% 50% +32%
Deciduous Forest (L3) 86% 26% +60%
Leaf-off Conditions 85% 35% +50%
High Stem Density (K6) 87% 67% +20%
Mask R-CNN consistently outperforms traditional methods in diverse forest structures.

Case Study: Bavarian Forest National Park

In the Bavarian Forest, Mask R-CNN with CHM-based variant achieved over 10% better F1 scores (average 82%) compared to RGB variants. This demonstrates the critical role of lidar-derived height information for accurate tree delineation in dense, structurally complex old-growth forests, despite challenges with very small trees.

Key Metric: 82% F1 Score (CHM variant)
Context: Dense, old-growth forest, high structural diversity

+20% F1 Score Improvement in Leaf-off Conditions

Case Study: Landshut (Leaf-off vs. Leaf-on)

In Landshut, leaf-off conditions yielded F1 scores up to 20% higher than leaf-on, with the CHM variant performing significantly better (73-100% F1). This highlights the benefit of reduced foliage occlusion for improved segmentation accuracy and more precise tree height estimation.

Key Metric: Up to 100% F1 (leaf-off CHM)
Context: Mixed deciduous forest, varying stem densities

Calculate Your Potential ROI

Estimate the efficiency gains and cost savings your enterprise could achieve by implementing AI-powered insights.

Estimated Annual Savings $0
Annual Hours Reclaimed 0

Your AI Implementation Roadmap

A typical phased approach to integrate advanced AI solutions into your enterprise.

AI Strategy & Discovery

Identify key business challenges, assess data readiness, and define success metrics. Our experts work with your team to pinpoint high-impact AI opportunities aligned with your strategic goals.

Data Integration & Model Training

Seamlessly integrate your existing data sources. Our platform ingests, cleans, and prepares your data for custom model training, ensuring optimal performance tailored to your unique operational context.

Pilot Deployment & Iteration

Launch an initial AI pilot in a controlled environment. Gather feedback, analyze preliminary results, and rapidly iterate on model performance and system integration to maximize efficacy.

Full-Scale Rollout & Optimization

Scale the AI solution across your enterprise. Establish continuous monitoring, performance tuning, and ongoing support to ensure long-term value and sustained competitive advantage.

Ready to Transform Your Operations?

Book a personalized strategy session with our AI experts to explore how these insights can drive tangible results for your business.

Ready to Get Started?

Book Your Free Consultation.

Let's Discuss Your AI Strategy!

Lets Discuss Your Needs


AI Consultation Booking