Page 153 - AI for Good-Innovate for Impact Final Report 2024
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AI for Good-Innovate for Impact



               dynamic risk mapping. This data will guide infrastructure upgrades and policy decisions. After
               successful implementation in 3 highway corridors in Telangana, iRASTE’s successful model is
               set to expand to more cities in the next 3-5 years. The objective is to outfit 350 buses, setting
               a standard for nationwide implementation and reducing India’s road fatality rates. Ultimately,       34 - ITE&C
               iRASTE represents a significant step towards a safer future, showcasing AI’s role in public safety
               and the promise of scalable, life-saving innovations.


               34�3� Use case requirements

               •    UC44-REQ01: It is critical that the transport vehicles are equipped with ADAS devices
                    which are network capable.
               •    UC44-REQ02: It is critical that inference from the model is mapped to the location data
                    such as maps to visualize the locations of the grey spots.
               •    UC44-REQ03: It is critical that historical data in form of black spots is available for a period
                    of study.
               •    UC44-REQ04: it is critical that the road owning agency consumes or considers the
                    inference from the models to take preventive actions to reduce accidents.
               •    UC44-REQ05: it is expected that the driver behavior assessment is done by correlating
                    the ADAS alerts per kilometer per driver.


               34�4� Sequence diagram























               34�5� References

               [1] Project iRASTE Telangana

               [2] Project iRaste Telangana Youtube:






















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