NBA to Debut AI for Out-of-Bounds Calls
In brief
- The NBA is set to trial an AI-powered system that automatically determines possession in cases of out-of-bounds disputes.
- Using cameras around the court, this technology aims to mimic the precision of Hawk-Eye, which revolutionized line calls in tennis.
- This move follows a high-profile incident where a contentious call led to criticism of human officiating.
- If successful, it could reduce delays and improve game flow by instantly resolving such decisions.
- While not replacing referees entirely, the AI system is designed to assist them, ensuring faster and more accurate rulings on the court.
- Fans can expect this technology to make its debut in select games soon, with a focus on improving officiating efficiency.
- The NBA plans to closely monitor the system's performance and gather feedback before deciding whether to expand its use beyond out-of-bounds calls.
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