T

Tcd Segformer Mit B0

Developed by restor
This is a semantic segmentation model capable of delineating tree-covered areas from high-resolution (10 cm/pixel) aerial images.
Downloads 127
Release Time : 5/20/2024

Model Overview

This semantic segmentation model is trained on global aerial imagery and can accurately identify tree-covered areas in similar images. The model does not detect individual trees but provides pixel-by-pixel tree/non-tree classification.

Model Features

High-Resolution Processing Capability
Optimized specifically for high-resolution aerial images at 10 cm/pixel
Global Adaptability
Trained on diverse global ecological data, suitable for various geographical environments
Lightweight Deployment
Supports efficient CPU-side inference, ideal for field operations
Pixel-Level Accuracy
Provides pixel-by-pixel tree canopy coverage probability predictions

Model Capabilities

Aerial Image Analysis
Canopy Cover Detection
Semantic Segmentation
Ecological Assessment

Use Cases

Ecological Research
Canopy Coverage Assessment
Calculate the percentage of tree canopy coverage in a study area
Provides precise vegetation coverage statistics
Ecological Restoration Monitoring
Track the progress of vegetation restoration projects
Quantifies vegetation coverage changes
Urban Planning
Urban Greenery Analysis
Assess tree distribution in urban areas
Generates urban greenery heatmaps
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