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Detr Resnet 101 Dc5

Developed by facebook
DETR is an end-to-end object detection model using Transformer, employing ResNet-101 as the backbone network and trained on the COCO dataset.
Downloads 9,379
Release Time : 3/2/2022

Model Overview

This model achieves object detection through an encoder-decoder Transformer structure, eliminating the need for anchor boxes and non-maximum suppression steps in traditional methods.

Model Features

End-to-end object detection
Eliminates the need for anchor box design and non-maximum suppression steps in traditional methods, simplifying the detection process
Transformer architecture
Uses an encoder-decoder Transformer structure for visual tasks
Bipartite matching loss
Employs the Hungarian algorithm for optimal matching between predictions and annotations

Model Capabilities

Object detection in images
Multi-category recognition
Bounding box prediction

Use Cases

Computer vision applications
Scene understanding
Identifying multiple objects in complex scenes
Achieves 44.9 AP on COCO validation set
Intelligent surveillance
Detecting people and objects in surveillance footage
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