PERCEPTION SYSTEM DESIGN FOR MULTIPLE OBJECT TRACKING IN AUTONOMOUS VEHICLES
Autonomous vehicles, right now, is undergoing a rapid development by reputable automotive industries and notable universities all around the world. This is mainly caused by the potential of autonomous vehicles to provide safer driving experience than the normal vehicles which are driven by a pers...
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Format: | Final Project |
Language: | Indonesia |
Online Access: | https://digilib.itb.ac.id/gdl/view/49919 |
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Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
Summary: | Autonomous vehicles, right now, is undergoing a rapid development by reputable
automotive industries and notable universities all around the world. This is mainly
caused by the potential of autonomous vehicles to provide safer driving experience
than the normal vehicles which are driven by a person. Indonesia’s new capital city
plan establishes higher opportunity in the development of autonomous vehicles by
building the infrastructures specifically for autonomous vehicles and electric
vehicles.
To further increase the safety of autonomous vehicles, a reliable perception system
is neccessary. One of the most important tasks in perception system is object
tracking. Object tracking extracts important information such as position, and
velocity of multiple objects which surround the autonomous vehicle before sending
it to the motion planner for determining the most optimal maneuver. Object tracking
gives rise to a challenge, that is, performing measurements without placing any
sensors to objects surrounding the autonomous vehicle.
This research proposes a perception system design for multiple objects tracking
with 3 components as the basis: object detection and classification, object
matching, and state estimation. In this design, You Only Look Once (YOLO) is used
as the object detector, Feedforward Neural Network, and Oriented FAST and
Rotated BRIEF (ORB) serves as the basis for object matching, and last Extended
Kalman Filter (EKF) is used for state estimation. This design has been proven to
complete object tracking with only 0,15330 meter (x-axis), and 0,48577 meter (zaxis)
mean absolute error in an experiment ranging from -2 to 2 meter (x-axis), and
4,55 to 9,55 meter (z-axis). |
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