Changes between Initial Version and Version 1 of Other/Summer/2021/SelfDrivingVehicle


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Timestamp:
Jun 15, 2021, 6:36:21 PM (3 years ago)
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anthonysiu2000
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  • Other/Summer/2021/SelfDrivingVehicle

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     1[[TOC(Other/Summer/2020/SmartIntersection/*, depth=1, heading=Smart Intersection)]]
     2
     3= Smart Intersection - daily traffic flow  =
     4**WINLAB Summer Internship 2021**
     5
     6**Group Members: Sandeep Alankar, Anthony Siu**
     7
     8== Project Website ==
     9https://bzz3ru.wixsite.com/smartintersection
     10
     11== Gitlab Repositories ==
     12**!DeepStream and YOLOv3 Application:** https://gitlab.orbit-lab.org/si2020-smartintersection/smart-intersection-ds-yolov3-app
     13
     14**OpenCV- Add Bounding Boxes to Video:** https://gitlab.orbit-lab.org/si2020-smartintersection/add-bounding-boxes
     15
     16== Project Objective ==
     17
     18The goal of this project is to create a method for estimating the statistics for vehicle count/traffic flow into one intersection in New York City. As an example, record videos of the northbound traffic on Amsterdam Avenue, as vehicles are entering the 120th St./Amsterdam Av. intersection. Using YOLOv3 deep learning model, detect and count vehicles as they approach/enter the intersection from south, making sure that there is no double-counting. Use 180 second long video fragments (approximately two traffic light cycles), and repeat up to half a dozen times a day,  for a number of workweek/weekend days during the same times of each day. Compare the vehicle count (traffic flow) as a function of the time of the day. Utilize NVIDIA !DeepStream deployed on COSMOS GPU compute servers to run the model.  The method should be generalizable/expandable to any direction of vehicle movement, when appropriate camera views are available.