• Title/Summary/Keyword: Subspace-based methods

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TDOA/FDOA 정보를 이용한 Gauss-Newton 기법 기반의 이동 신호원 위치 및 속도 추정 방법과 성능 분석 (Gauss-Newton Based Estimation for Moving Emitter Location Using TDOA/FDOA Measurements and Its Analysis)

  • 김용희;김동규;한진우;송규하;김형남
    • 전자공학회논문지
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    • 제50권6호
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    • pp.62-71
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    • 2013
  • TDOA (time difference of arrival)와 FDOA (frequency difference of arrival)를 동시에 사용하는 신호원 위치추정 방법은 단일 정보를 이용하는 경우에 비해 높은 정확도를 가지며 이동 신호원의 속도 추정이 가능하다는 장점을 가지고 있다. 최근 종속 미지변수를 정의한 후 비반복적으로 해를 구하는 방법들이 제안되고 있으나 전자전 환경과 같이 수신단과 신호원 간의 거리가 상대적으로 먼 경우에는 추정 정확도가 낮고 모든 수신단 쌍이 동일한 기준 수신단을 공유하여야 한다는 운용상의 제약이 존재한다. 따라서 본 논문에서는 비선형 LS 최적해를 반복계산을 통해 얻어내는 Gauss-Newton 기법을 적용하여 이동 신호원의 위치좌표와 속도벡터를 추정한다. 또한 이동 신호원의 위치와 속도 추정 결과를 효과적이고 정량적으로 분석하기 위해 CRLB (Cramer-Rao lower bound) 행렬을 각각의 부공간으로 분해하여 2차원 공간상에 독립된 CEP (circular error probable) 평면으로 도시한다. 모의실험을 통해 주어진 수신단 배치와 조합에서 이동 신호원의 위치 및 속도 추정 성능을 확인하고 분석 결과를 제시한다.

PRINCIPAL DISCRIMINANT VARIATE (PDV) METHOD FOR CLASSIFICATION OF MULTICOLLINEAR DATA WITH APPLICATION TO NEAR-INFRARED SPECTRA OF COW PLASMA SAMPLES

  • Jiang, Jian-Hui;Yuqing Wu;Yu, Ru-Qin;Yukihiro Ozaki
    • 한국근적외분광분석학회:학술대회논문집
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    • 한국근적외분광분석학회 2001년도 NIR-2001
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    • pp.1042-1042
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    • 2001
  • In linear discriminant analysis there are two important properties concerning the effectiveness of discriminant function modeling. The first is the separability of the discriminant function for different classes. The separability reaches its optimum by maximizing the ratio of between-class to within-class variance. The second is the stability of the discriminant function against noises present in the measurement variables. One can optimize the stability by exploring the discriminant variates in a principal variation subspace, i. e., the directions that account for a majority of the total variation of the data. An unstable discriminant function will exhibit inflated variance in the prediction of future unclassified objects, exposed to a significantly increased risk of erroneous prediction. Therefore, an ideal discriminant function should not only separate different classes with a minimum misclassification rate for the training set, but also possess a good stability such that the prediction variance for unclassified objects can be as small as possible. In other words, an optimal classifier should find a balance between the separability and the stability. This is of special significance for multivariate spectroscopy-based classification where multicollinearity always leads to discriminant directions located in low-spread subspaces. A new regularized discriminant analysis technique, the principal discriminant variate (PDV) method, has been developed for handling effectively multicollinear data commonly encountered in multivariate spectroscopy-based classification. The motivation behind this method is to seek a sequence of discriminant directions that not only optimize the separability between different classes, but also account for a maximized variation present in the data. Three different formulations for the PDV methods are suggested, and an effective computing procedure is proposed for a PDV method. Near-infrared (NIR) spectra of blood plasma samples from daily monitoring of two Japanese cows have been used to evaluate the behavior of the PDV method in comparison with principal component analysis (PCA), discriminant partial least squares (DPLS), soft independent modeling of class analogies (SIMCA) and Fisher linear discriminant analysis (FLDA). Results obtained demonstrate that the PDV method exhibits improved stability in prediction without significant loss of separability. The NIR spectra of blood plasma samples from two cows are clearly discriminated between by the PDV method. Moreover, the proposed method provides superior performance to PCA, DPLS, SIMCA md FLDA, indicating that PDV is a promising tool in discriminant analysis of spectra-characterized samples with only small compositional difference.

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