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Segformer B0 Finetuned Segments Sidewalk

Developed by tobiasc
This model is a SegFormer semantic segmentation model fine-tuned on the sidewalk-semantic dataset from Segments.ai, suitable for sidewalk scene analysis.
Downloads 86
Release Time : 3/3/2022

Model Overview

SegFormer is a Transformer-based semantic segmentation model featuring a hierarchical Transformer encoder and lightweight all-MLP decoder head, excelling in sidewalk semantic segmentation tasks.

Model Features

Efficient Transformer architecture
Employs hierarchical Transformer encoder to achieve good segmentation results while maintaining efficiency
Lightweight MLP decoder head
Uses all-MLP decoder head design to reduce computational complexity
Sidewalk scene optimization
Specifically fine-tuned on sidewalk-semantic dataset to optimize segmentation performance for sidewalk scenes

Model Capabilities

Image semantic segmentation
Sidewalk scene analysis
Road element recognition

Use Cases

Smart city
Sidewalk maintenance analysis
Identify and segment various elements on sidewalks to assist urban infrastructure maintenance
Can accurately segment elements like pavement and obstacles
Autonomous driving
Pedestrian path planning
Provide precise sidewalk semantic information for autonomous driving systems
Helps vehicles understand pedestrian accessible areas
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