
AI traffic cameras spark backlash in Mississippi — as government officials try to calm fears they’ll be used to catch motorists who are speeding, not wearing seatbelts or texting at the wheel
THE SO WHAT
AI in public sensing is running into the same legitimacy wall as early facial recognition—without tight scope, auditability, and clear deletion policies, communities assume worst-case surveillance. Any operator deploying AI vision in public or semi-public spaces needs a governance and comms plan on day one, not after the backlash.
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