Maskformer Swin Tiny Ade
A semantic segmentation model trained on the ADE20k dataset, using a unified framework to handle instance/semantic/panoptic segmentation tasks
Downloads 5,196
Release Time : 3/2/2022
Model Overview
MaskFormer achieves segmentation tasks by predicting a set of masks and their corresponding labels, unifying the three segmentation problems into an instance segmentation framework
Model Features
Unified Segmentation Framework
Unifies instance segmentation, semantic segmentation, and panoptic segmentation under the same prediction paradigm
Swin Backbone Network
Uses the efficient Swin Transformer as the feature extractor
Mask Prediction Mechanism
Achieves pixel-level segmentation by predicting binary masks and corresponding categories
Model Capabilities
Image Semantic Segmentation
Pixel-level Classification
Scene Understanding
Use Cases
Scene Parsing
Architectural Scene Segmentation
Identifies and segments different structural elements in architectural images
Examples show accurate segmentation effects on buildings/castles, etc.
Indoor Scene Analysis
Analyzes furniture and decorative elements in indoor spaces
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