This repository is a comprehensive open-source project that demonstrates the integration of object detection and tracking using the YOLOv8 object detection algorithm and Streamlit, a popular Python web application framework for building interactive web applications. This project provides a user-friendly and customizable interface that can detect and track objects in real-time video streams.
Tracking-With_object-Detection-MOV.mov
Python 3.6+ YOLOv8 Streamlit
pip install ultralytics streamlit
- Clone the repository: git clone https://github.com/Basel-anaya/Real-time-Object-Detection-and-Tracking-using-YOLOv8.git
- Change to the repository directory:
cd Real-time-Object-Detection-and-Tracking-using-YOLOv8
- Install the requirements:
pip install -r requirements.txt
- Download the pre-trained YOLOv8 weights from (https://github.com/ultralytics/assets/releases/download/v0.0.0/yolov8n.pt) and save them to the
weights
directory in the same project.
- Run the app with the following command:
streamlit run app.py
- The app should open in a new browser window.
- Select task (Detection, Segmentation)
- Select model confidence
- Use the slider to adjust the confidence threshold (25-100) for the model.
One the model config is done, select a source.
- The default image with its objects-detected image is displayed on the main page.
- Select a source. (radio button selection
Image
). - Upload an image by clicking on the "Browse files" button.
- Click the "Detect Objects" button to run the object detection algorithm on the uploaded image with the selected confidence threshold.
- The resulting image with objects detected will be displayed on the page. Click the "Download Image" button to download the image.("If save image to download" is selected)
- Create a folder with name
videos
in the same directory - Dump your videos in this folder
- In
settings.py
edit the following lines.
# video
VIDEO_DIR = ROOT / 'videos' # After creating the videos folder
# Suppose you have four videos inside videos folder
# Edit the name of video_1, 2 (with the names of your video files)
VIDEO_1_PATH = VIDEO_DIR / 'video_1.mp4'
VIDEO_2_PATH = VIDEO_DIR / 'video_2.mp4'
# Edit the same names here also.
VIDEOS_DICT = {
'video_1': VIDEO_1_PATH,
'video_2': VIDEO_2_PATH,
}
# Your videos will start appearing inside streamlit webapp 'Choose a video'.
- Click on
Detect Video Objects
button and the selected task (detection/segmentation) will start on the selected video.
- Select the RTSP stream button
- Enter the rtsp url inside the textbox and hit
Detect Objects
button
- Select the source as YouTube
- Copy paste the url inside the text box.
- The detection/segmentation task will start on the YouTube video url
movobjdetyoutubeurl.mov
This app is based on the YOLOv8(https://github.com/ultralytics/ultralytics) object detection algorithm. The app uses the Streamlit(https://github.com/streamlit/streamlit) library for the user interface.
Hit star ⭐ if you like this repo!!!