D

Dfine Large Obj2coco E25

Developed by ustc-community
D-FINE is a real-time object detection model that achieves exceptional localization accuracy by redefining the bounding box regression task in the DETR model.
Downloads 217
Release Time : 3/28/2025

Model Overview

The D-FINE model enhances object detection localization accuracy through two core components: Fine-grained Distribution Refinement (FDR) and Global Optimal Localization Self-Distillation (GO-LSD), making it suitable for various real-time detection scenarios.

Model Features

Fine-grained distribution optimization
Improves object detection localization accuracy by redefining the bounding box regression task.
Global optimal localization self-distillation
Further optimizes the model's localization capability using self-distillation techniques.
Real-time detection
The model is designed for real-time object detection scenarios, offering both speed and high accuracy.

Model Capabilities

Object detection
Real-time image analysis
Bounding box regression

Use Cases

Autonomous driving
Vehicle and pedestrian detection
Real-time detection of vehicles and pedestrians in autonomous driving systems to ensure road safety.
High-precision localization and rapid response
Surveillance systems
Anomaly behavior detection
Real-time detection of abnormal behavior or suspicious objects in surveillance videos.
High-precision detection and real-time alerts
Retail analytics
Product recognition
Identifying and locating products in retail scenarios for inventory management or customer behavior analysis.
High-precision product localization
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