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Segformer B1 512x512 Ade 160k

Developed by smp-hub
PyTorch-based Segformer model for semantic segmentation tasks, pre-trained on the ADE20K dataset
Downloads 20
Release Time : 11/29/2024

Model Overview

This is a semantic segmentation model based on the Segformer architecture, specifically optimized for the ADE20K dataset, capable of pixel-level classification of different objects in images.

Model Features

Efficient Segmentation Architecture
Utilizes the Segformer architecture, combining the advantages of Transformer and CNN for efficient and accurate semantic segmentation
Pre-trained Weights
Pre-trained on the ADE20K dataset, ready for inference or fine-tuning
512x512 Resolution Support
Supports high-resolution image input, suitable for fine-grained segmentation tasks

Model Capabilities

Image Semantic Segmentation
Pixel-Level Classification
Scene Understanding

Use Cases

Computer Vision
Scene Parsing
Performs semantic segmentation on complex scene images to identify different objects and regions
Can output pixel-level classification results
Autonomous Driving Perception
Used for road and obstacle recognition in autonomous driving systems
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