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Integrating Yolo V8 For Football Analysis #728
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👋 Hello @Jackson-Mu, thank you for raising an issue about Ultralytics HUB 🚀! Please visit our HUB Docs to learn more:
If this is a 🐛 Bug Report, please provide screenshots and steps to reproduce your problem to help us get started working on a fix. If this is a ❓ Question, please provide as much information as possible, including dataset, model, environment details etc. so that we might provide the most helpful response. We try to respond to all issues as promptly as possible. Thank you for your patience! |
@Jackson-Mu hi Jackson, Thank you for reaching out and for your interest in leveraging YOLOv8 for football analysis. Your project sounds fascinating and ambitious! To get started with YOLOv8 for analyzing football match videos, here are some steps and considerations:
Here is a simple example to get you started with object detection using YOLOv8: from ultralytics import YOLO
# Load a pre-trained YOLOv8 model
model = YOLO('yolov8n.pt')
# Perform inference on a video
results = model('path_to_your_video.mp4')
# Process results
for result in results:
boxes = result.boxes # Bounding boxes
for box in boxes:
print(f"Detected {box.label} with confidence {box.confidence}") For more detailed guidance, you can refer to our documentation and the Ultralytics HUB for additional resources and examples. If you encounter any issues or have specific questions as you progress, please provide a minimum reproducible code example and ensure you are using the latest versions of Best of luck with your project, and feel free to reach out if you need further assistance! |
Hi Paula,
Thank you so much for the invaluable information and guidelines provided!
They are incredibly helpful. I do have a few follow-up questions:
*1. Training on a Laptop CPU*: Would it be feasible to perform model
training on a standard laptop CPU? The videos I need to train on are around
2 hours long each.
*2. Dataset Preparation:* For preparing the dataset with labeled videos, is
there a tool you recommend? I have Adobe Premiere Pro; would it be suitable
for this task?
*3. Existing Projects:* Are there any existing projects using YOLOv8 or
other models that you could recommend? I am looking for a product that
might offer a solution similar to what I need.
Thank you again for your assistance. Your guidance is greatly appreciated!
Best regards,
Jackson
Message ID: ***@***.***>
… |
@Jackson-Mu hi Jackson, Thank you for your kind words! I'm glad to hear that the information provided has been helpful. Let's address your follow-up questions:
Feel free to explore these resources and adapt them to your specific use case. If you have any more questions or need further assistance, please don't hesitate to ask. We're here to help! |
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Question
To the YoloV8 Team,
I hope this message finds you well.
I am currently working on a project involving Full Match Videos of football games, and I am seeking advice on how to leverage your YoloV8 model for my objectives.
My primary goal is to analyze these videos to extract valuable insights and provide strategic advice during specific moments in the game. For instance, I aim to offer recommendations such as increasing attacking efforts, reducing fouls, and enhancing defensive strategies based on the current state of the match.
Furthermore, I intend to develop a system that can predict the game winner at various points during the match and forecast the overall outcome while the game is still in progress.
Could you provide guidance on how to best utilize the YoloV8 model to achieve these goals? Your expertise and any advice on this matter would be greatly appreciated.
Thank you for your time and assistance.
Best regards,
Jackson Mukeshimana
Additional
No response
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