AI in sports analytics: object detection and tracking with open source vision models - Knime
In sports, where real-time decisions and precision are critical, the ability to analyze images through object detection and tracking can be a game-changer.
For example, imagine instantly determining the winner in a cycling race or tracking the ball movement in a soccer match—all with the help of AI and visual workflows. These capabilities enable faster decision-making, reduce human error, and deliver detailed performance insights that go beyond the limits of human observation.
In this blog post, we’ll explain how to:
- Use pre-trained vision models to analyze and process visual data efficiently.
- Dive into two specific use cases using KNIME workflows:
- Object detection in cycling: Identify the lead cyclist in a race.
- Object tracking in soccer: Track the ball's movement across video frames.
Read more: https://www.knime.com/blog/ai-in-sports-analytics-object-detection
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