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Deformable Detr Single Scale

Developed by SenseTime
The Deformable DETR single-scale model, designed for object detection tasks, employs end-to-end training and demonstrates excellent performance on the COCO 2017 dataset.
Downloads 712
Release Time : 3/2/2022

Model Overview

This model combines convolutional neural networks and transformer architectures, efficiently detecting objects in images through a deformable attention mechanism, suitable for various object detection scenarios.

Model Features

Deformable attention mechanism
Utilizes deformable attention modules to process image features more efficiently and reduce computational complexity.
End-to-end training
Directly outputs detection results without complex post-processing steps, simplifying the training process.
Bipartite matching loss
Uses the Hungarian algorithm for optimal matching between predictions and annotations, improving detection accuracy.

Model Capabilities

Image object detection
Multi-category object recognition
Bounding box prediction

Use Cases

Computer vision
Scene understanding
Identifies various objects in complex scenes, such as airports, sports fields, etc.
Accurately detects and locates multiple objects
Intelligent surveillance
Used for object detection and analysis in surveillance videos.
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