Page 36 - TTG-Taiwan Transportation Equipment Guide (TTG)-2021-09 Edition
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       Feature Topic


              AI based V
              AI based Vehicle Vision Perception ehicle Vision Perception

              System tr
              System trains datasets for suppliersains datasets for suppliers




                 Training a self-driving vehicles’ AI platform
              requires datasets, however, not all companies have
              the means to create such datasets themselves. This
              is where the “AI based Vehicle Vision Perception
              System,” developed by the Institute for Information
              Industry (III) comes in.


                 Hsu Ting, a senior planner at the III Smart
              System Institute Emerging Markets and Planning
              Service Centre, told CENS during an interview
              at the Taipei AMPA show that the datasets they
              use are primarily a fusion of images and LiDAR
              point clouds. Regarded as Taiwan’s fi rst “Formosa   worked with a local supplier to design an automatic
              Database” for autonomous driving development,     braking system should the driver maintain course
              Hsu said the team at III designed the platform    into driving into a scooter rider or pedestrian in the
              and enabled the use of a semi-automatic labeling   blind spot.
              system once they had manually labeled the images
              and LiDAR point clouds. The efforts can relieve      However, in order to transfer data from high-
              clients from needing to direct resources and time   resolution images without any latency, which can
              into training their own AI systems.               be fatal for vehicle-oriented AI if the system cannot
                                                                keep up, the system requires hardware that can
                 To properly train an AI, such datasets could   sustain high-speed network and data transfers.
              be designed according to the local region, Hsu    Hsu said they worked with local suppliers and
              said.  III  had  incorporated  the  semi-automatic   turned the Nvidia chip they were using to adhere to
              labeling system to allow companies to change      specifi cations for automotive use. The automotive-
              and adjust labels according to localized culture or   spec hardware, designed with ADLINK, is featured
              environmental factors. For instance, the Formosa   in its IPC model and was launched in June.
              Datasets would refl ect more scooters on the roads
              in Taiwan than in some European countries, or lack
              data for snowy road conditions, as Taiwan is mostly
              in a subtropical climate. Having collected data
              for over two years, Hsu said the AI could identify
              diverse road objects in complex environments for
              FCW, PCW, BSD, and LDW development.

                 News of pedestrians or scooters getting caught
              under a bus or large-sized trucks is unfortunately
              common in Taiwan, which Hsu attributes to a
              higher population and traffic density. The III-
              designed system is used conjunctively with four
              high-resolution cameras stuck to four points on
              the vehicle, locations that can assist the driver to
              avoid scooters or pedestrians caught in the blind
              spots when turning or driving. The possibilities are
              numerous with the system: Hsu says they have also
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