| Literature DB >> 28208637 |
Phat Huynh1, Trong-Hop Do2, Myungsik Yoo3.
Abstract
This paper proposes a probability-based algorithm to track the LED in vehicle visible light communication systems using a camera. In this system, the transmitters are the vehicles' front and rear LED lights. The receivers are high speed cameras that take a series of images of the LEDs. ThedataembeddedinthelightisextractedbyfirstdetectingthepositionoftheLEDsintheseimages. Traditionally, LEDs are detected according to pixel intensity. However, when the vehicle is moving, motion blur occurs in the LED images, making it difficult to detect the LEDs. Particularly at high speeds, some frames are blurred at a high degree, which makes it impossible to detect the LED as well as extract the information embedded in these frames. The proposed algorithm relies not only on the pixel intensity, but also on the optical flow of the LEDs and on statistical information obtained from previous frames. Based on this information, the conditional probability that a pixel belongs to a LED is calculated. Then, the position of LED is determined based on this probability. To verify the suitability of the proposed algorithm, simulations are conducted by considering the incidents that can happen in a real-world situation, including a change in the position of the LEDs at each frame, as well as motion blur due to the vehicle speed.Entities:
Keywords: camera; light-emitting diode; probability; tracking; vehicle; visible light communication
Year: 2017 PMID: 28208637 PMCID: PMC5336049 DOI: 10.3390/s17020347
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1System architecture.
Figure 2Motion blur effect.
Figure 3Motion vector construction.
Figure 4Effective motion vector map.
Figure 5Concept of a probability-based tracking algorithm.
Figure 6Simulation procedure.
Figure 7Object image blurred using the point spread function.
Figure 8Point spread function over the vehicle speeds.
Figure 9Image after random walk and motion blur model are applied.
Figure 10Tracking results on the image.
Figure 11ROC of the algorithm.
Figure 12Tracking error rate over 100 images.