Fisheye Lens Camera based Autonomous Valet Parking System
- URL: http://arxiv.org/abs/2104.13119v1
- Date: Tue, 27 Apr 2021 11:36:03 GMT
- Title: Fisheye Lens Camera based Autonomous Valet Parking System
- Authors: Young Gon Jo, Seok Hyeon Hong, Sung Soo Hwang, and Jeong Mok Ha
- Abstract summary: This paper proposes an efficient autonomous valet parking system utilizing only cameras which are the most widely used sensor.
Fisheye cameras which have a wider angle of view compared to pinhole cameras are used.
- Score: 3.461121828373003
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This paper proposes an efficient autonomous valet parking system utilizing
only cameras which are the most widely used sensor. To capture more information
instantaneously and respond rapidly to changes in the surrounding environment,
fisheye cameras which have a wider angle of view compared to pinhole cameras
are used. Accordingly, visual simultaneous localization and mapping is used to
identify the layout of the parking lot and track the location of the vehicle.
In addition, the input image frames are converted into around view monitor
images to resolve the distortion of fisheye lens because the algorithm to
detect edges are supposed to be applied to images taken with pinhole cameras.
The proposed system adopts a look up table for real time operation by
minimizing the computational complexity encountered when processing AVM images.
The detection rate of each process and the success rate of autonomous parking
were measured to evaluate performance. The experimental results confirm that
autonomous parking can be achieved using only visual sensors.
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