Deep Learning Based Vehicle Tracking System Using License Plate
Detection And Recognition
- URL: http://arxiv.org/abs/2005.08641v1
- Date: Sun, 10 May 2020 14:03:33 GMT
- Title: Deep Learning Based Vehicle Tracking System Using License Plate
Detection And Recognition
- Authors: Lalit Lakshmanan, Yash Vora, Raj Ghate
- Abstract summary: The proposed system uses a novel approach to vehicle tracking using Vehicle License plate detection and recognition (OCR) technique.
Results were obtained at a speed of 30 frames per second with accuracy close to human.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Vehicle tracking is an integral part of intelligent traffic management
systems. Previous implementations of vehicle tracking used Global Positioning
System(GPS) based systems that gave location of the vehicle of an individual on
their smartphones.The proposed system uses a novel approach to vehicle tracking
using Vehicle License plate detection and recognition (VLPR) technique, which
can be integrated on a large scale with traffic management systems. Initial
methods of implementing VLPR used simple image processing techniques which were
quite experimental and heuristic. With the onset of Deep learning and Computer
Vision, one can create robust VLPR systems that can produce results close to
human efficiency. Previous implementations, based on deep learning, made use of
object detection and support vector machines for detection and a heuristic
image processing based approach for recognition. The proposed system makes use
of scene text detection model architecture for License plate detection and for
recognition it uses the Optical character recognition engine (OCR) Tesseract.
The proposed system obtained extraordinary results when it was tested on a
highway video using NVIDIA Ge-force RTX 2080ti GPU, results were obtained at a
speed of 30 frames per second with accuracy close to human.
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