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A Design and Implementation of Software Defined Radio for Rapid Prototyping of GNSS Receiver
박귀우,양진모,박찬식 사단법인 항법시스템학회 2018 Journal of Positioning, Navigation, and Timing Vol.7 No.4
In this paper, a Software Defined Radio (SDR) architecture was designed and implemented for rapid prototyping of GNSS receiver. The proposed SDR can receive various GNSS and direct sequence spread spectrum (DSSS) signals without software modification by expanded input parameters containing information of the desired signal. Input parameters include code information, center frequency, message format, etc. To receive various signal by parameter controlling, a correlator, a data bit extractor and a receiver channel were designed considering the expanded input parameters. In navigation signal processing, pseudorange was measured based on Coordinated Universal Time (UTC) and appropriate navigation message decoder was selected by message format of input parameter so that receiver position can be calculated even if SDR is set up various GNSS combination. To validate the proposed SDR, the software was implemented using C++, CUDA C based on GPU and USRP. Experimentation has confirmed that changing the input parameters allows GPS, GLONASS, and BDS satellite signals to be received. The precision of the position from implemented SDR were measured below 5 m (Circular Error Probability; CEP) for all scenarios. This means that the implemented SDR operated normally. The implemented SDR will be used in a variety of fields by allowing prototyping of various GNSS signal only by changing input parameters.
기계학습 모델과 설문결과를 융합한 공격적 성향 운전자 탐색 연구
박귀우,박찬식 사단법인 인문사회과학기술융합학회 2017 예술인문사회융합멀티미디어논문지 Vol.7 No.3
In this paper, correlation analysis was performed between questionnaire and machine learning based aggressive tendency measurements. this study is part of a aggressive driver detection using machine learning and questionnaire. To collect two types tendency from questionnaire and measurements system, we constructed experiments environments and acquired the data from 30 drivers. In experiment, the machine learning based aggressive tendency measurements system was designed using a driver behavior detection model. And the model was constructed using accelerate and brake position data and hidden markov model method through supervised learning. We performed a correlation analysis between two types tendency using Pearson method. The result was represented to high correlation. The results will be utilize for fusing questionnaire and machine learning. Furthermore, It is verified that the machine learning based aggressive tendency is unique to each driver. The aggressive tendency of driver will be utilized as measurements for advanced driver assistance system such as attention assist, driver identification and anti-theft system. 본 논문에서는 공격적 성향의 운전자를 판단할 수 있는 기계학습 방식과 설문지 방식을 융합한 운전자 성향 판단 연구의 일환으로 두 방법으로 결정된 운전자 성향정보의 상관성을 분석하였다. 30명의 운전자를 대상으로 설문지를 이용한 주관적 성향을 정보를 수집하고 기계학습 기반의 성향판단 시스템을 이용하여 객관적 성향을 취득하였다. 이 중에서 기계학습 기반의 성향판단 시스템은 운전자행위 성향 분류 모델을 기반으로 설계되었다. 모델을 도출하기 위하여 운전자의 가속 패달과 브레이크 패달 조작 데이터와 HMM 기법을 이용한 기계학습을 수행하였다. 두 가지 방법으로 추정한 공격적 성향정보를 Pearson 방식으로 상관관계를 분석한 결과 높은 상관관계가 있음을 확인하였다. 뿐만 아니라 객관적 성향은 동일한 운전자에 대하여 고유한 특성이 있음을 확인하였다. 본 논문의 실험결과는 향후 두 방법을 융합하는 연구를 수행하기 위한 참고자료가 될 것이다. 또한 운전자의 공격적 성향이 주의어시스트, 운전자 식별, 도난방지 등 지능형 운전자 보조시스템에도 응용 될 수 있음을 확인하였다.
An Efficient Positioning Method for Multi-GNSS with Multi-SBAS
박귀우,조민규,박찬식 사단법인 항법시스템학회 2018 Journal of Positioning, Navigation, and Timing Vol.7 No.4
The current SBAS service does not provide a method to integrate multiple SBAS corrections. This paper proposes a positioning method to effectively integrate multiple SBAS and multiple GNSS. In the method, the final position is obtained by the weighted sum of the positions obtained from the combination of GNSS and SBAS. Since each position is independently computed and combined using flexible weights, it has a simple structure that can easily cope with various environments. In order to verify the operation and performance of the proposed method, raw measurements of GNSS and SBAS were collected using commercial receivers. The experiments using real signals show that the combined use of two SBAS corrections was more accurate by 0.05~0.4m(2dRMS) than using only one SBAS correction. To improve the position accuracy, this paper considered the integration of multi-GNSS and multi-SBAS, which was not found in other existing studies. The proposed method is expected to be a core technology for designing multi-GNSS navigation receivers considering multi-SBAS corrections. The importance of the method will be increased as KPS and KASS also available in near future.
박귀우,채정근,송세필,손석보,최승호,박찬식 사단법인 항법시스템학회 2017 Journal of Positioning, Navigation, and Timing Vol.6 No.1
In this study, to design a multi-GNSS receiver using single RF front-end, the receiving performances for various frequency plans were evaluated. For the fair evaluation and comparison of different frequency plans, the same signal needs to be received at the same time. For this purpose, two synchronized RF front-ends were configured using USRP X310, and PCbased software was implemented so that the quality of the digital IF signal received at each front-end could be evaluated. The software consisted of USRP control, signal reception, signal acquisition, signal tracking, and C/N0 estimation function. Using the implemented software and USRP-based hardware, the signal receiving performances for various frequency plans, such as the signal attenuation status, overlapping of different systems, and the use of imaginary or real signal, were evaluated based on the C/N0 value. The results of the receiving performance measurement for the various frequency plans suggested in this study would be useful reference data for the design of a multi-GNSS receiver in the future.
박귀우(Kwiwoo Park),채정근(JeongGeun Chae),문상호(Sang-Ho Moon),박찬식(Chansik Park) 대한전기학회 2014 전기학회논문지 Vol.63 No.1
In this paper, a landmark based localization system using a Kinect sensor is proposed and evaluated with the implemented system for precise and autonomous navigation of low cost robots. The proposed localization method finds the positions of landmark on the image plane and the depth value using color and depth images. The coordinates transforms are defined using the depth value. Using coordinate transformation, the position in the image plane is transformed to the position in the body frame. The ranges between the landmarks and the Kinect sensor are the norm of the landmark positions in body frame. The Kinect sensor position is computed using the tri-lateral whose inputs are the ranges and the known landmark positions. In addition, a new matching method using the pin hole model is proposed to reduce the mismatch between depth and color images. Furthermore, a height error compensation method using the relationship between the body frame and real world coordinates is proposed to reduce the effect of wrong leveling. The error analysis are also given to find out the effect of focal length, principal point and depth value to the range. The experiments using 2D bar code with the implemented system show that the position with less than 3cm error is obtained in enclosed space(3,500mm×3,000mm×2,500mm)