T

Tcd Segformer Mit B4

Developed by restor
This is a semantic segmentation model capable of delineating tree cover from high-resolution (10 cm/pixel) aerial images.
Downloads 49
Release Time : 5/20/2024

Model Overview

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

Model Features

High-Resolution Aerial Image Processing
Capable of processing high-resolution aerial images at 10 cm/pixel, accurately identifying tree-covered areas.
Global Diversity Training
Trained on globally diverse ecological zone aerial images, adaptable to tree identification needs in different regions.
Efficient Inference Capability
Supports minute-level CPU inference for single-battery drone aerial data, suitable for bandwidth-limited areas.
Multi-Scale Feature Fusion
Utilizes a Feature Pyramid Network (FPN)-like structure, outputting multi-scale feature fusion results based on different network stages.

Model Capabilities

Aerial Image Analysis
Tree Cover Detection
Pixel-Level Classification
Large Image Tiling Processing

Use Cases

Ecological Research
Canopy Coverage Assessment
Evaluate the percentage of tree canopy coverage in a study area from aerial images.
Provides precise coverage statistics.
Geographic Information Systems
Regional Vegetation Analysis
Conduct vegetation coverage analysis for specific areas combined with vector files.
Supports precise statistics based on geographic boundaries.
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