--- license: agpl-3.0 library_name: ultralytics pipeline_tag: object-detection tags: - yolo - ultralytics - yolov11 - object-detection - fall-detection - computer-vision - safety datasets: - custom --- ![](https://huggingface.co/melihuzunoglu/human-fall-detection/resolve/main/sample_image.jpg) # Human Fall Detection with YOLOv11 This model is a specialized version of YOLOv11, fine-tuned to detect human falls in various environments. It is designed to provide real-time alerts for safety monitoring in elderly care facilities, hospitals, and industrial workplaces. ## 🚀 Quick Start (Usage) You don't need to download the weights manually. You can load and run the model directly using the Python code below: ```python from ultralytics import YOLO from huggingface_hub import hf_hub_download import os model_path = hf_hub_download(repo_id="melihuzunoglu/human-fall-detection", filename="best.pt") model = YOLO(model_path) results = model.predict(source="image1.jpg", conf=0.25, save=True) ``` ## ✅ Supported Classes (Labels) The model can detect and distinguish between the following three states: ```python Fallen: Active falling motion or a person on the ground after a fall. Sitting: People sitting on chairs, benches, or floor. Standing: People in an upright, standing position. ``` ## 📊 Model Information ```python Architecture: YOLOv11 (Ultralytics) Task: Object Detection (Fall Detection) Input Resolution: 640x640 pixels Inference Speed: Optimized for real-time applications ``` ## 🎯 Target Applications ```python Elderly Safety: Automated fall detection for home or nursing home environments. Occupational Health: Monitoring falls in hazardous work zones or construction sites. Healthcare Support: Providing an extra layer of monitoring for patient rooms. ``` ## 🛠 Training Details The model was trained using the Ultralytics framework. The dataset was curated and pre-processed via Roboflow to ensure high accuracy and minimal false positives in common sitting or lying down scenarios. ## 👤 Developer Author: Melih Uzunoğlu [Linkedin](https://www.linkedin.com/in/melih-uzunoglu/) Framework: Ultralytics YOLOv11 Dataset Source: Roboflow ### Disclaimer This model is developed for educational and research purposes. For critical safety implementations, it should be integrated with professional-grade monitoring systems.