T

Tcd Segformer Mit B1

Developed by restor
This is a semantic segmentation model capable of delineating tree cover in high-resolution (10cm/pixel) aerial images.
Downloads 54
Release Time : 5/20/2024

Model Overview

Trained on global aerial imagery, this model accurately delineates tree cover in similar images. It does not detect individual trees but provides pixel-level tree/non-tree classification.

Model Features

High-Resolution Aerial Image Processing
Optimized for 10cm/pixel resolution aerial images, accurately identifying tree-covered areas.
Globally Diverse Training Data
Trained on globally diverse aerial imagery, suitable for various ecological environments.
Efficient Inference Capability
Capable of efficient inference even on CPUs, ideal for field use and bandwidth-limited environments.

Model Capabilities

Aerial Image Analysis
Tree Cover Detection
Pixel-Level Classification

Use Cases

Ecological Research
Canopy Cover Assessment
Assess the percentage of a study area covered by tree canopy.
Provides precise percentage data on coverage.
Environmental Monitoring
Forest Change Monitoring
Monitor changes in forest cover over time.
Identifies increases or decreases in tree cover.
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