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Yolov5n Forklift

Developed by keremberke
Lightweight forklift object detection model based on YOLOv5n, optimized for forklift recognition
Downloads 103
Release Time : 1/1/2023

Model Overview

This model is a lightweight object detection model trained on the YOLOv5n architecture, specifically designed to identify forklifts in images or videos. Suitable for forklift monitoring and management in scenarios such as logistics and warehousing.

Model Features

Lightweight Design
Based on the YOLOv5n architecture, the model has a small size, making it suitable for deployment on edge devices.
High-Precision Detection
Achieves 78.9% mAP@0.5 accuracy in forklift detection tasks.
Easy Fine-Tuning
Supports transfer learning and fine-tuning on custom datasets.

Model Capabilities

Forklift Object Detection
Real-Time Object Recognition
Bounding Box Prediction

Use Cases

Logistics and Warehousing
Warehouse Forklift Monitoring
Real-time monitoring of forklift locations and activities in warehouses.
Improves warehouse safety management efficiency.
Forklift Usage Statistics
Tracks forklift usage frequency and working hours.
Optimizes equipment scheduling and resource allocation.
Industrial Safety
Hazard Zone Warning
Detects if forklifts enter hazardous or restricted areas.
Prevents industrial accidents.
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