How SafeZone Revolutionizes Bus Safety with Automotive Camera and Vision AI Detection

EE TimesWednesday, October 29, 2025 at 1:00:00 PM
How SafeZone Revolutionizes Bus Safety with Automotive Camera and Vision AI Detection
SafeZone is making waves in bus safety by introducing innovative automotive camera technology and vision AI detection to prevent passenger injuries caused by bus doors. This is crucial as it addresses a significant global issue where vulnerable groups, like the elderly and children, often face risks during their daily commutes. By enhancing safety measures, SafeZone not only protects passengers but also sets a new standard for public transportation safety.
— Curated by the World Pulse Now AI Editorial System

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