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[Keyword] target classification(5hit)

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  • Multi-Target Classification Based Automatic Virtual Resource Allocation Scheme

    Abu Hena Al MUKTADIR  Takaya MIYAZAWA  Pedro MARTINEZ-JULIA  Hiroaki HARAI  Ved P. KAFLE  

     
    PAPER

      Pubricized:
    2019/02/19
      Vol:
    E102-D No:5
      Page(s):
    898-909

    In this paper, we propose a method for automatic virtual resource allocation by using a multi-target classification-based scheme (MTCAS). In our method, an Infrastructure Provider (InP) bundles its CPU, memory, storage, and bandwidth resources as Network Elements (NEs) and categorizes them into several types in accordance to their function, capabilities, location, energy consumption, price, etc. MTCAS is used by the InP to optimally allocate a set of NEs to a Virtual Network Operator (VNO). Such NEs will be subject to some constraints, such as the avoidance of resource over-allocation and the satisfaction of multiple Quality of Service (QoS) metrics. In order to achieve a comparable or higher prediction accuracy by using less training time than the available ensemble-based multi-target classification (MTC) algorithms, we propose a majority-voting based ensemble algorithm (MVEN) for MTCAS. We numerically evaluate the performance of MTCAS by using the MVEN and available MTC algorithms with synthetic training datasets. The results indicate that the MVEN algorithm requires 70% less training time but achieves the same accuracy as the related ensemble based MTC algorithms. The results also demonstrate that increasing the amount of training data increases the efficacy ofMTCAS, thus reducing CPU and memory allocation by about 33% and 51%, respectively.

  • Parametric Representation of UWB Radar Signatures and Its Physical Interpretation

    Masahiko NISHIMOTO  

     
    BRIEF PAPER-Electromagnetic Theory

      Vol:
    E101-C No:1
      Page(s):
    39-43

    This paper describes a parametric representation of ultra-wideband radar signatures and its physical interpretation. Under the scattering theory of electromagnetic waves, a transfer function of radar scattering is factorized into three elementary parts and a radar signature with three parameters is derived. To use these parameters for radar target classification and identification, the relation between them and the response waveform is analytically revealed and numerically checked. The result indicates that distortion of the response waveform is sensitive to these parameters, and thus they can be expected to be used as features for radar target classification and identification.

  • A GMM-Based Target Classification Scheme for a Node in Wireless Sensor Networks

    Youngsoo KIM  Sangbae JEONG  Daeyoung KIM  

     
    PAPER

      Vol:
    E91-B No:11
      Page(s):
    3544-3551

    In this paper, an efficient node-level target classification scheme in wireless sensor networks (WSNs) is proposed. It uses acoustic and seismic information, and its performance is verified by the classification accuracy of vehicles in a WSN. Because of the hard limitation in resources, parametric classifiers should be more preferable than non-parametric ones in WSN systems. As a parametric classifier, the Gaussian mixture model (GMM) algorithm not only shows good performances to classify targets in WSNs, but it also requires very few resources suitable to a sensor node. In addition, our sensor fusion method uses a decision tree, generated by the classification and regression tree (CART) algorithm, to improve the accuracy, so that the algorithm drives a considerable increase of the classification rate using less resources. Experimental results using a real dataset of WSN show that the proposed scheme shows a 94.10% classification rate and outperforms the k-nearest neighbors and the support vector machine.

  • Stable Decomposition of Mueller Matrix

    Jian YANG  Yoshio YAMAGUCHI  Hiroyoshi YAMADA  Masakazu SENGOKU  Shiming LIN  

     
    PAPER-Electronic and Radio Applications

      Vol:
    E81-B No:6
      Page(s):
    1261-1268

    Huynen has already provided a method to decompose a Mueller matrix in order to retrieve detailed target information in a polarimetric radar system. However, this decomposition sometimes fails in the presence of small error or noise in the elements of a Mueller matrix. This paper attempts to improve Huynen's decomposition method. First, we give the definition of stable decomposition and present an example, showing a problem of Huynen's approach. Then two methods are proposed to carry out stable decompositions, based on the nonlinear least square method and the Newton's method. Stability means the decomposition is not sensitive to noise. The proposed methods overcomes the problems on the unstable decomposition of Mueller matrix, and provides correct information of a target.

  • Radar Image Cross-Range Scaling Method--By Analysis of Picture Segments--

    Masaharu AKEI  Masato NIWA  Mituyoshi SHINONAGA  Hiroshi MIYAUCHI  Masanori MATUMURA  

     
    PAPER-Radar System

      Vol:
    E76-B No:10
      Page(s):
    1258-1262

    In the ISAR (Inverse Synthetic Aperture Radar), when a target is to be recognized by use of the radar image produced from the radar echoes, it is important first to estimate the scale of the target. To estimate the scale, the rotating motion of the target must be estimated. This paper describes a method for estimating the scale of the target from the information on the radar image by converting the target figure into a simple model and estimating the rotating motion of the target.