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Segformer B4 1024x1024 City 160k

Developed by smp-hub
Semantic segmentation model based on Segformer architecture, optimized for Cityscapes dataset
Downloads 14
Release Time : 11/29/2024

Model Overview

This model is a PyTorch-implemented semantic segmentation model based on the Segformer architecture, specifically optimized for urban street scene image segmentation tasks. It can accurately identify and segment different object categories in images, such as roads, vehicles, pedestrians, etc.

Model Features

Efficient Architecture
Adopts the Segformer architecture, combining the advantages of Transformer and CNN to achieve efficient computation while maintaining high performance
Pre-trained Support
Provides pre-trained weights that can be directly used for inference or fine-tuning
High-Resolution Processing
Supports high-resolution image input of 1024x1024

Model Capabilities

Street scene image segmentation
Multi-category recognition
High-resolution image processing

Use Cases

Intelligent Transportation
Road Scene Understanding
Used for road scene parsing in autonomous driving systems
Can accurately identify key elements such as roads, vehicles, and pedestrians
Urban Management
Urban Infrastructure Analysis
Used for automatic identification and classification of urban infrastructure
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