Mask2former Swin Tiny Cityscapes Panoptic
Mask2Former model based on Swin-Tiny backbone, optimized for Cityscapes panoptic segmentation tasks
Downloads 2,126
Release Time : 1/3/2023
Model Overview
Mask2Former is a universal image segmentation model that unifies instance segmentation, semantic segmentation, and panoptic segmentation tasks through predicting masks and corresponding labels. This version is fine-tuned for panoptic segmentation on the Cityscapes dataset.
Model Features
Unified Segmentation Architecture
Uses a single model architecture to handle three major tasks: instance/semantic/panoptic segmentation
Efficient Attention Mechanism
Introduces masked attention mechanism to improve performance without increasing computational burden
Multi-scale Feature Processing
Effectively captures features at different scales through multi-scale deformable attention Transformer
Model Capabilities
Image Segmentation
Panoptic Segmentation
Semantic Segmentation
Instance Segmentation
Use Cases
Autonomous Driving
Street Scene Understanding
Identify various objects and areas in road scenes
Can accurately segment elements like vehicles, pedestrians, roads, etc.
Urban Management
Infrastructure Analysis
Automatically identify and classify urban infrastructure
Can distinguish areas like buildings, green belts, sidewalks, etc.
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