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Community extracts approximate BabyVision benchmark scores for children ages 3–12

A Reddit user visually estimated numerical performance values from the BabyVision benchmark chart, reporting approximate average scores: 3 years old ~40%, 6 years old ~66%, 10 years old ~74%, 12 years old ~87%. The benchmark, hosted at unipat.ai, evaluates vision models against human developmental baselines.

25 engagement·1 source·Sat, Jul 11, 2026, 02:48 PM
The user noted they could not find exact numerical performance values for different age groups of children, so they visually inspected the chart to estimate approximate scores. The benchmark is available at https://unipat.ai/benchmarks/BabyVision. This provides a reference for comparing AI vision model performance to human developmental stages.

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BabyVision(benchmark)unipat.ai(tool)unipat.ai(company)

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