An experiment with 276 participants finds that vision language model assistance improves human game testers' defect identification, especially with design documentation, while AI errors create challenges.
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Human-AI Collaborative Game Testing with Vision Language Models
An experiment with 276 participants finds that vision language model assistance improves human game testers' defect identification, especially with design documentation, while AI errors create challenges.