2021
DOI: 10.1364/oe.422851
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Employing DIALux to relieve machine-learning training data collection when designing indoor positioning systems

Abstract: We propose and demonstrate using the DIALux software with our proposed linear-regression machine-learning (LRML) algorithm for designing a practical indoor visible light positioning (VLP) system. Experimental results reveal that the average position errors and error distributions of the model trained via the DIALux simulation and trained via the experimental data match with each other. This implies that the training data can be generated in DIALux if the room dimensions and LED luminary parameters are availabl… Show more

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Cited by 20 publications
(8 citation statements)
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“…Sensors are installed on the left and right sides of the intelligent robot. During the specific travel process, the sensors collect the corresponding rotational speed and position data to calculate the speed of the wheels, and then transmit the corresponding rotational speed data to the server for fusion through the corresponding electronic compass data, to achieve the measurement and calculation of the robot coordinates and position in the moving distance [23,24]. In addition, the analysis of sensor data is required to analyze the specific model of Bluetooth positioning and realize the specific calculation of indoor position by classifying and inputting the data.…”
Section: System Analysis Of Mobile Positioningmentioning
confidence: 99%
“…Sensors are installed on the left and right sides of the intelligent robot. During the specific travel process, the sensors collect the corresponding rotational speed and position data to calculate the speed of the wheels, and then transmit the corresponding rotational speed data to the server for fusion through the corresponding electronic compass data, to achieve the measurement and calculation of the robot coordinates and position in the moving distance [23,24]. In addition, the analysis of sensor data is required to analyze the specific model of Bluetooth positioning and realize the specific calculation of indoor position by classifying and inputting the data.…”
Section: System Analysis Of Mobile Positioningmentioning
confidence: 99%
“…In the visible light positioning system, the noise in the link has a great influence on the positioning accuracy, and the noise described in this section is the interference caused by other factors in removing the reflected light part of the wall received by the receiving end PD, which is defined as narrow noise [ 21 ].…”
Section: Channel Characteristics and Received Power Distributionmentioning
confidence: 99%
“…The human eye cannot detect intensity modulation pulses and preserves them as a constant light [ 9 ]. Additionally, LEDs can be utilized in many fascinating applications, including localization, positioning [ 10 , 11 ], intelligent transportation systems [ 6 ], underwater communication [ 12 ], etc. LEDs have an extended lifetime, low power consumption (they conserve energy by 80% [ 13 ]), low cost, and a smaller carbon footprint in comparison with traditional lighting sources [ 14 ].…”
Section: Introductionmentioning
confidence: 99%