Ultralytics YOLO11 🚀
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Updated
Dec 6, 2024 - Python
Ultralytics YOLO11 🚀
Implementation of popular deep learning networks with TensorRT network definition API
A fast, easy-to-use, production-ready inference server for computer vision supporting deployment of many popular model architectures and fine-tuned models.
🚀 Use YOLO11 in real-time for object detection tasks, with edge performance ⚡️ powered by ONNX-Runtime.
Python library for YOLO small object detection and instance segmentation
This repository is based on shouxieai/tensorRT_Pro, with adjustments to support YOLOv8.
Enhances construction site safety using YOLO for object detection, identifying hazards like workers without helmets or safety vests, and proximity to machinery or vehicles. HDBSCAN clusters safety cone coordinates to create monitored zones. Post-processing algorithms improve detection accuracy.
Samples code for world class Artificial Intelligence SoCs for computer vision applications.
Converting COCO annotation (CVAT) to annotation for YOLOv8-seg (instance segmentation) and YOLOv8-obb (oriented bounding box detection)
A comprehensive tool for processing and analyzing video footage, producing detailed insights into gameplay and player performance enhancing game understanding and performance evaluation.
Based on tensorrt v8.0+, deploy detection, pose, segment, tracking of YOLO11 with C++ and python api.
Ultralytics VSCode snippets plugin to provide quick examples and templates of boilerplate code to accelerate your code development and learning.
This repository contains Jupyter Notebooks for training the YOLO11 model on custom datasets for image classification, instance segmentation, object detection, and pose estimation tasks.
Explore computer vision use cases and projects across various industries, including retail, transportation, medical imaging, manufacturing, agriculture, wildlife, and more, leveraging state-of-the-art models for object detection, image segmentation, object tracking, pose estimation, and beyond.
the python api for axengine runtime
Automatic Sorting Bin. Separating recyclables, landfill and compost
This project implements a face emotion detection system using YOLOv11, trained on a custom dataset to classify emotions into five distinct classes. The model utilizes the Ultralytics YOLO framework for real-time inference.
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