Page 175 - AI for Good-Innovate for Impact
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AI for Good-Innovate for Impact



               Use case – 40: Traffic accidents stop in the virtual world - Use virtual

               simulation synthesis data to improve intelligent driving AI algorithm
               and reduce the accident rate in traffic scenarios                                                    40-GEELY









               Country: China

               Organization: GEELY

               Contact person: Ms. REN Xian, renxian@ geely .com


               40�1� Use case summary table

                Domain         Transportation
                The Prob-      •  The level of autonomous driving at this juncture does not yet align with
                lem to be         the completion objective of Level 4 unmanned operation, primarily
                addressed         attributed to the imperative of algorithmic enhancement, and a concomi-
                                  tant deficiency of adequate algorithmic data
                               •  Autonomous driving deployments necessitate an abundance of
                                  real-world data to facilitate training and testing processes, but the
                                  procurement and annotation of this data is inevitably expensive and labor
                                  intensive.
                               •  The acquired data may exhibit biases, and fail to encompass every
                                  conceivable driving scenario.
                               •  Autonomous driving systems are bound by the requirement to withstand
                                  testing under diverse and complex circumstances, such as harsh weather
                                  situations, congested traffic conditions, and ongoing road construction
                                  projects.  Nevertheless, these specific conditions may not be consistently
                                  accessible for real-world testing.
                               •  In the dimension of validation and testing, the restrictions of closed test-
                                  ing arenas include a monolithic environmental context, an inability to
                                  replicate varying complexities encountered on real-world roads, a defi-
                                  ciency in affirming performance on actual roadways, and an exorbitantly
                                  high cost associated with utilising testing equipment and spaces.
                Key aspects of  •  Utilizes virtually simulated synthetic data to amplify the perceptual
                the solution      capabilities of the autonomous driving system, and also to augment the
                                  efficiency of testing and validation processes.
                               •  This avant-garde approach plays a pivotal role in elevating the system's
                                  performance, safety, and adaptability, while concurrently accelerating
                                  the progression of system development and testing.  This consequently
                                  results in a substantial reduction in costs and risks.
                               •  AI generated virtual data generation is helpful to realize the purpose of
                                  energy saving and emission reduction, and protect the green earth.

                Technology     AI-based Network Analysis, Scenario Analysis, energy saving, emission
                keywords       reduction, Simulated security, Reduce labor costs, protect the green earth,
                               life saving.
                Data availabil-  Will be released soon.
                ity




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