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[Author] Takayuki NAKA(43hit)

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  • Block Estimation Method for Two-Dimensional Adaptive Lattice Filter

    InHwan KIM  Takayuki NAKACHI  Nozomu HAMADA  

     
    PAPER-Digital Signal Processing

      Vol:
    E80-A No:4
      Page(s):
    737-744

    In the adaptive lattice estimation process, it is well known that the convergence speed of the successive stage is affected by the estimation errors of reflection coefficients in its preceding stages. In this paper, we propose block estimation methods of two-dimensional (2-D) adaptive lattice filter. The convergence speed of the proposed algorithm is significantly enhanced by improving the adaptive performance of preceding stages. Furthermore, this process can be simply realized. The modeling of 2-D AR field and texture image are demonstrated through computer simulations.

  • Microwave CT Imaging for a Human Forearm at 3GHz

    Takayuki NAKAJIMA  Hiroshi SAWADA  Itsuo YAMAURA  

     
    LETTER

      Vol:
    E78-B No:6
      Page(s):
    874-876

    This paper describes the imaging method for a human forearm in the microwave transmission CT at 3GHz. To improve the spatial resolution, the correction method of the diffraction effects is adopted and the high directivity antennas are used. A cross-sectional image of the human forearm is obtained in vivo.

  • A Study on Non-octave Scalable Image Coding and Its Performance Evaluation Using Digital Cinema Test Material

    Takayuki NAKACHI  Tomoko SAWABE  Junji SUZUKI  Tetsuro FUJII  

     
    PAPER-Image

      Vol:
    E89-A No:9
      Page(s):
    2405-2414

    JPEG2000, an international standard for still image compression, offers 1) high coding performance, 2) unified lossless/lossy compression, and 3) resolution and SNR scalability. Resolution scalability is an especially promising attribute given the popularity of Super High Definition (SHD) images like digital-cinema. Unfortunately, its current implementation of resolution scalability is restricted to powers of two. In this paper, we introduce non-octave scalable coding (NSC) based on the use of filter banks. Two types of non-octave scalable coding are implemented. One is based on a DCT filter bank and the other uses wavelet transform. The latter is compatible with JPEG2000 Part2. By using the proposed algorithm, images with rational scale resolutions can be decoded from a compressed bit stream. Experiments on digital cinema test material show the effectiveness of the proposed algorithm.

  • A Design Method of an Adaptive Multichannel IIR Lattice Predictor for k-Step Ahead Prediction

    Katsumi YAMASHITA  M. H. KAHAI  Takayuki NAKACHI  Hayao MIYAGI  

     
    LETTER-Adaptive Signal Processing

      Vol:
    E76-A No:8
      Page(s):
    1350-1352

    An adaptive multichannel IIR lattice predictor for k-step ahead prediction is constructed and the effectiveness of the proposed predictor is evaluated using digital simulations.

  • Machine Learning-Based Compensation Methods for Weight Matrices of SVD-MIMO Open Access

    Kiminobu MAKINO  Takayuki NAKAGAWA  Naohiko IAI  

     
    PAPER-Antennas and Propagation

      Pubricized:
    2023/07/24
      Vol:
    E106-B No:12
      Page(s):
    1441-1454

    This paper proposes and evaluates machine learning (ML)-based compensation methods for the transmit (Tx) weight matrices of actual singular value decomposition (SVD)-multiple-input and multiple-output (MIMO) transmissions. These methods train ML models and compensate the Tx weight matrices by using a large amount of training data created from statistical distributions. Moreover, this paper proposes simplified channel metrics based on the channel quality of actual SVD-MIMO transmissions to evaluate compensation performance. The optimal parameters are determined from many ML parameters by using the metrics, and the metrics for this determination are evaluated. Finally, a comprehensive computer simulation shows that the optimal parameters improve performance by up to 7.0dB compared with the conventional method.

  • Network Traffic Anomaly Detection: A Revisiting to Gaussian Process and Sparse Representation

    Yitu WANG  Takayuki NAKACHI  

     
    PAPER-Communication Theory and Signals

      Pubricized:
    2023/06/27
      Vol:
    E107-A No:1
      Page(s):
    125-133

    Seen from the Internet Service Provider (ISP) side, network traffic monitoring is an indispensable part during network service provisioning, which facilitates maintaining the security and reliability of the communication networks. Among the numerous traffic conditions, we should pay extra attention to traffic anomaly, which significantly affects the network performance. With the advancement of Machine Learning (ML), data-driven traffic anomaly detection algorithms have established high reputation due to the high accuracy and generality. However, they are faced with challenges on inefficient traffic feature extraction and high computational complexity, especially when taking the evolving property of traffic process into consideration. In this paper, we proposed an online learning framework for traffic anomaly detection by embracing Gaussian Process (GP) and Sparse Representation (SR) in two steps: 1). To extract traffic features from past records, and better understand these features, we adopt GP with a special kernel, i.e., mixture of Gaussian in the spectral domain, which makes it possible to more accurately model the network traffic for improving the performance of traffic anomaly detection. 2). To combat noise and modeling error, observing the inherent self-similarity and periodicity properties of network traffic, we manually design a feature vector, based on which SR is adopted to perform robust binary classification. Finally, we demonstrate the superiority of the proposed framework in terms of detection accuracy through simulation.

  • Investigation on e-Learning Status Estimation for New Learners — Classifier Selection on Representative Sample Selection

    Siyang YU  Kazuaki KONDO  Yuichi NAKAMURA  Takayuki NAKAJIMA  Masatake DANTSUJI  

     
    LETTER-Educational Technology

      Pubricized:
    2020/01/20
      Vol:
    E103-D No:4
      Page(s):
    905-909

    This article introduces our investigation on learning state estimation in e-learning on the condition that visual observation and recording of a learner's behaviors is possible. In this research, we examined methods of adaptation for a new learner for whom a small number of ground truth data can be obtained.

  • Dynamic Load-Distribution Method of uTupleSpace Data-Sharing Mechanism for Ubiquitous Data Open Access

    Yutaka ARAKAWA  Keiichiro KASHIWAGI  Takayuki NAKAMURA  Motonori NAKAMURA  

     
    PAPER

      Vol:
    E97-D No:4
      Page(s):
    644-653

    The number of networked devices of sensors and actuators continues to increase. We are developing a data-sharing mechanism called uTupleSpace as middleware for storing and retrieving ubiquitous data that are input or output by such devices. uTupleSpace enables flexible retrieval of sensor data and flexible control of actuator devices, and it simplifies the development of various applications. Though uTupleSpace requires scalability against increasing amounts of ubiquitous data, traditional load-distribution methods using a distributed hash table (DHT) are unsuitable for our case because of the ununiformity of the data. Data are nonuniformly generated at some particular times, in some particular positions, and by some particular devices, and their hash values focus on some particular values. This feature makes it difficult for the traditional methods to sufficiently distribute the load by using the hash values. Therefore, we propose a new load-distribution method using a DHT called the dynamic-help method. The proposed method enables one or more peers to handle loads related to the same hash value redundantly. This makes it possible to handle the large load related to one hash value by distributing the load among peers. Moreover, the proposed method reduces the load caused by dynamic load-redistribution. Evaluation experiments showed that the proposed method achieved sufficient load-distribution even when the load was concentrated on one hash value with low overhead. We also confirmed that the proposed method enabled uTupleSpace to accommodate the increasing load with simple operational rules stably and with economic efficiency.

  • Secure Overcomplete Dictionary Learning for Sparse Representation

    Takayuki NAKACHI  Yukihiro BANDOH  Hitoshi KIYA  

     
    PAPER

      Pubricized:
    2019/10/09
      Vol:
    E103-D No:1
      Page(s):
    50-58

    In this paper, we propose secure dictionary learning based on a random unitary transform for sparse representation. Currently, edge cloud computing is spreading to many application fields including services that use sparse coding. This situation raises many new privacy concerns. Edge cloud computing poses several serious issues for end users, such as unauthorized use and leak of data, and privacy failures. The proposed scheme provides practical MOD and K-SVD dictionary learning algorithms that allow computation on encrypted signals. We prove, theoretically, that the proposal has exactly the same dictionary learning estimation performance as the non-encrypted variant of MOD and K-SVD algorithms. We apply it to secure image modeling based on an image patch model. Finally, we demonstrate its performance on synthetic data and a secure image modeling application for natural images.

  • Secure OMP Computation Maintaining Sparse Representations and Its Application to EtC Systems

    Takayuki NAKACHI  Hitoshi KIYA  

     
    PAPER-Image Processing and Video Processing

      Pubricized:
    2020/06/22
      Vol:
    E103-D No:9
      Page(s):
    1988-1997

    In this paper, we propose a secure computation of sparse coding and its application to Encryption-then-Compression (EtC) systems. The proposed scheme introduces secure sparse coding that allows computation of an Orthogonal Matching Pursuit (OMP) algorithm in an encrypted domain. We prove theoretically that the proposed method estimates exactly the same sparse representations that the OMP algorithm for non-encrypted computation does. This means that there is no degradation of the sparse representation performance. Furthermore, the proposed method can control the sparsity without decoding the encrypted signals. Next, we propose an EtC system based on the secure sparse coding. The proposed secure EtC system can protect the private information of the original image contents while performing image compression. It provides the same rate-distortion performance as that of sparse coding without encryption, as demonstrated on both synthetic data and natural images.

  • 2-D Adaptive Autoregressive Modeling Using New Lattice Structure

    Takayuki NAKACHI  Katsumi YAMASHITA  Nozomu HAMADA  

     
    PAPER

      Vol:
    E79-A No:8
      Page(s):
    1145-1150

    The present paper investigates a two-dimensional (2-D) adaptive lattice filter used for modeling 2-D AR fields. The 2-D least mean square (LMS) lattice algorithm is used to update the filter coefficients. The proposed adaptive lattice filter can represent a wider class of 2-D AR fields than previous ones. Furthremore, its structure is also shown to possess orthogonality in the backward prediction error fields. These result in superior convergence and tracking properties to the adaptive transversal filter and other adaptive 2-D lattice models. Then, the convergence property of the proposed adaptive LMS lattice algorithm is discussed. The effectiveness of the proposed model is evaluated for parameter identification through computer simulation.

  • Layered Multicast Encryption of Motion JPEG2000 Code Streams for Flexible Access Control

    Takayuki NAKACHI  Kan TOYOSHIMA  Yoshihide TONOMURA  Tatsuya FUJII  

     
    PAPER-Video Processing

      Vol:
    E95-D No:5
      Page(s):
    1301-1312

    In this paper, we propose a layered multicast encryption scheme that provides flexible access control to motion JPEG2000 code streams. JPEG2000 generates layered code streams and offers flexible scalability in characteristics such as resolution and SNR. The layered multicast encryption proposal allows a sender to multicast the encrypted JPEG2000 code streams such that only designated groups of users can decrypt the layered code streams. While keeping the layering functionality, the proposed method offers useful properties such as 1) video quality control using only one private key, 2) guaranteed security, and 3) low computational complexity comparable to conventional non-layered encryption. Simulation results show the usefulness of the proposed method.

  • Layered Low-Density Generator Matrix Codes for Super High Definition Scalable Video Coding System

    Yoshihide TONOMURA  Daisuke SHIRAI  Takayuki NAKACHI  Tatsuya FUJII  Hitoshi KIYA  

     
    PAPER

      Vol:
    E92-A No:3
      Page(s):
    798-807

    In this paper, we introduce layered low-density generator matrix (Layered-LDGM) codes for super high definition (SHD) scalable video systems. The layered-LDGM codes maintain the correspondence relationship of each layer from the encoder side to the decoder side. This resulting structure supports partial decoding. Furthermore, the proposed layered-LDGM codes create highly efficient forward error correcting (FEC) data by considering the relationship between each scalable component. Therefore, the proposed layered-LDGM codes raise the probability of restoring the important components. Simulations show that the proposed layered-LDGM codes offer better error resiliency than the existing method which creates FEC data for each scalable component independently. The proposed layered-LDGM codes support partial decoding and raise the probability of restoring the base component. These characteristics are very suitable for scalable video coding systems.

  • A Unified Coding Algorithm of Lossless and Near-Lossless Color Image Compression

    Takayuki NAKACHI  Tatsuya FUJII  Junji SUZUKI  

     
    PAPER

      Vol:
    E83-A No:2
      Page(s):
    301-310

    This paper describes a unified coding algorithm for lossless and near-lossless color image compression that exploits the correlations between RGB signals. A reversible color transform that removes the correlations between RGB signals while avoiding any finite word length limitation is proposed for the lossless case. The resulting algorithm gives higher performance than the lossless JPEG without the color transform. Next, the lossless algorithm is extended to a unified coding algorithm of lossless and near-lossless compression schemes that can control the level of the reconstruction error on the RGB plane from 0 to p, where p is a certain small non-negative integer. The effectiveness of this algorithm was demonstrated experimentally.

  • Privacy-Preserving Support Vector Machine Computing Using Random Unitary Transformation

    Takahiro MAEKAWA  Ayana KAWAMURA  Takayuki NAKACHI  Hitoshi KIYA  

     
    PAPER-Image

      Vol:
    E102-A No:12
      Page(s):
    1849-1855

    A privacy-preserving support vector machine (SVM) computing scheme is proposed in this paper. Cloud computing has been spreading in many fields. However, the cloud computing has some serious issues for end users, such as the unauthorized use of cloud services, data leaks, and privacy being compromised. Accordingly, we consider privacy-preserving SVM computing. We focus on protecting visual information of images by using a random unitary transformation. Some properties of the protected images are discussed. The proposed scheme enables us not only to protect images, but also to have the same performance as that of unprotected images even when using typical kernel functions such as the linear kernel, radial basis function (RBF) kernel and polynomial kernel. Moreover, it can be directly carried out by using well-known SVM algorithms, without preparing any algorithms specialized for secure SVM computing. In an experiment, the proposed scheme is applied to a face-based authentication algorithm with SVM classifiers to confirm the effectiveness.

  • Dynamic Image Adjustment Method and Evaluation for Glassless 3D Viewing Systems

    Takayuki NAKATA  Isao NISHIHARA  

     
    PAPER-Image Processing and Video Processing

      Pubricized:
    2020/08/24
      Vol:
    E103-D No:11
      Page(s):
    2351-2361

    In this paper, we propose an accurate calibration method for glassless stereoscopic systems. The method uses a lenticular lens on a general display. Glassless stereoscopic displays are currently used in many fields; however, accurately adjusting their physical display position is difficult because an accuracy of several microns or one hundredth of a degree is required, particularly given their larger display area. The proposed method enables a dynamic adjustment of the positions of images on the display to match various physical conditions in three-dimensional (3D) displays. In particular, compared with existing approaches, this avoids degradation of the image quality due to the image location on the screen while improving the image quality by local mapping. Moreover, it is shown to decrease the calibration time by performing simultaneous processing for each local area. As a result of the calibration, the offset jitter representing the crosstalk reduces from 14.946 to 8.645 mm. It is shown that high-quality 3D videos can be generated. Finally, we construct a stereoscopic viewing system using a high-resolution display and lenticular lens and produce high-quality 3D images with automatic calibration.

  • Distributed Video Coding Using JPEG 2000 Coding Scheme

    Yoshihide TONOMURA  Takayuki NAKACHI  Tetsuro FUJII  

     
    PAPER-Image

      Vol:
    E90-A No:3
      Page(s):
    581-589

    Distributed Video Coding (DVC), based on the theorems proposed by Slepian-Wolf and Wyner-Ziv, is attracting attention as a new paradigm for video compression. Some of the DVC systems use intra-frame compression based on discrete cosine transform (DCT). Unfortunately, conventional DVC systems have low affinity with DCT. In this paper, we propose a wavelet-based DVC scheme that utilizs current JPEG 2000 standard. Accordingly, the scheme has scalability with regard to resolution and quality. In addition, we propose two methods to increase the coding gain of the new DVC scheme. One is the introduction of a Gray code, and the other method involves optimum quantization. An interesting point is that though our proposed method uses Gray code, it still achieves quality scalability. Tests confirmed that the PSNR is increased about 5 [dB] by the two methods, and the PSNR of the new scheme (with methods) is about 1.5-3 [dB] higher than that of conventional JPEG 2000.

  • Parallel Processing of Distributed Video Coding to Reduce Decoding Time

    Yoshihide TONOMURA  Takayuki NAKACHI  Tatsuya FUJII  Hitoshi KIYA  

     
    PAPER-Image Coding and Processing

      Vol:
    E92-A No:10
      Page(s):
    2463-2470

    This paper proposes a parallelized DVC framework that treats each bitplane independently to reduce the decoding time. Unfortunately, simple parallelization generates inaccurate bit probabilities because additional side information is not available for the decoding of subsequent bitplanes, which degrades encoding efficiency. Our solution is an effective estimation method that can calculate the bit probability as accurately as possible by index assignment without recourse to side information. Moreover, we improve the coding performance of Rate-Adaptive LDPC (RA-LDPC), which is used in the parallelized DVC framework. This proposal selects a fitting sparse matrix for each bitplane according to the syndrome rate estimation results at the encoder side. Simulations show that our parallelization method reduces the decoding time by up to 35[%] and achieves a bit rate reduction of about 10[%].

  • Multiresolution Lossless Video Coding Using Inter/Intra Frame Adaptive Prediction

    Takayuki NAKACHI  Tomoko SAWABE  Tatsuya FUJII  Tetsurou FUJII  

     
    PAPER-Image/Visual Signal Processing

      Vol:
    E85-A No:8
      Page(s):
    1822-1830

    Lossless video coding is required in the fields of archiving and editing digital cinema or digital broadcasting contents. This paper proposes multiresolution lossless video coding using a discrete wavelet transform and adaptive inter/intra-frame prediction in the wavelet domain. The multiresolution structure based on the wavelet transform facilitates interchange among several video source formats such as Super High Definition (SHD) images, HDTV, SDTV, and mobile applications. In order to increase the compression ratio, and to keep the computational cost low, the adaptive inter/intra-frame prediction is performed in the lowest wavelet transform domain. The adaptive inter/intra-frame prediction can adapt to changes in the local inter/intra-frame statistics. Experiments on digital cinema test sequences confirm effectiveness of the proposed algorithm.

  • L0 Norm Optimization in Scrambled Sparse Representation Domain and Its Application to EtC System

    Takayuki NAKACHI  Hitoshi KIYA  

     
    PAPER-Cryptography and Information Security

      Vol:
    E103-A No:12
      Page(s):
    1589-1598

    In this paper, we propose L0 norm optimization in a scrambled sparse representation domain and its application to an Encryption-then-Compression (EtC) system. We design a random unitary transform that conserves L0 norm isometry. The resulting encryption method provides a practical orthogonal matching pursuit (OMP) algorithm that allows computation in the encrypted domain. We prove that the proposed method theoretically has exactly the same estimation performance as the nonencrypted variant of the OMP algorithm. In addition, we demonstrate the security strength of the proposed secure sparse representation when applied to the EtC system. Even if the dictionary information is leaked, the proposed scheme protects the privacy information of observed signals.

1-20hit(43hit)