IEICE Transactions on Fundamentals of Electronics, Communications and Computer Sciences
Online ISSN : 1745-1337
Print ISSN : 0916-8508
Volume E106.A, Issue 11
Displaying 1-13 of 13 articles from this issue
Special Section on Smart Multimedia & Communication Systems
  • Takanori KOGA, Hiroyuki TSUJII
    2023 Volume E106.A Issue 11 Pages 1366-1367
    Published: November 01, 2023
    Released on J-STAGE: November 01, 2023
    JOURNAL FREE ACCESS
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  • Fuma SAWA, Yoshinori KAMIZONO, Wataru KOBAYASHI, Ittetsu TANIGUCHI, Hi ...
    Article type: PAPER
    Subject area: Acoustics
    2023 Volume E106.A Issue 11 Pages 1368-1375
    Published: November 01, 2023
    Released on J-STAGE: November 01, 2023
    Advance online publication: May 22, 2023
    JOURNAL FREE ACCESS

    Advanced driver-assistance systems (ADAS) generally play an important role to support safe drive by detecting potential risk factors beforehand and informing the driver of them. However, if too many services in ADAS rely on visual-based technologies, the driver becomes increasingly burdened and exhausted especially on their eyes. The drivers should be back out of monitoring tasks other than significantly important ones in order to alleviate the burden of the driver as long as possible. In-vehicle auditory signals to assist the safe drive have been appealing as another approach to altering visual suggestions in recent years. In this paper, we developed an in-vehicle auditory signals evaluation platform in an existing driving simulator. In addition, using in-vehicle auditory signals, we have demonstrated that our developed platform has highlighted the possibility to partially switch from only visual-based tasks to mixing with auditory-based ones for alleviating the burden on drivers.

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  • Shinji FUKUMA, Yoshiro IWAI, Shin-ichiro MORI
    Article type: PAPER
    Subject area: Image
    2023 Volume E106.A Issue 11 Pages 1376-1384
    Published: November 01, 2023
    Released on J-STAGE: November 01, 2023
    Advance online publication: May 22, 2023
    JOURNAL FREE ACCESS

    We propose a fine structure imaging for the surface and its inside of solid material such as coated drill bits with TiN (Titanium Nitride). We call this method i-MSE (innovative MSE) since the fine structure is visualized with a local mechanical strength (the local erosion rate) which is obtained from a set of erosion depth profiles measured with Micro Slurry-jet Erosion test (MSE). The local erosion rate at any sampling point is estimated from the depth profile using a sliding window regression and for the rest of the 2-dimensional points it is interpolated with the mean value coordinate technique. The interpolated rate is converted to a 2D image (i-MSE image) with a color map. The i-MSE image can distinguish layers if the testing material surface is composed of coats which have different resistance to erosion (erosive wear), while microscopic image such as SEM (Scanning Electron Microscope) and a calotest just provides appearance information, not physical characteristics. Experiments for some layered specimens show that i-MSE can be an effective tool to visualize the structure and to evaluate the mechanical characteristics for the surface and the inside of solid material.

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  • Mashiho MUKAIDA, Yoshiaki UEDA, Noriaki SUETAKE
    Article type: PAPER
    Subject area: Image
    2023 Volume E106.A Issue 11 Pages 1385-1394
    Published: November 01, 2023
    Released on J-STAGE: November 01, 2023
    Advance online publication: April 21, 2023
    JOURNAL FREE ACCESS

    Recently, a lot of low-light image enhancement methods have been proposed. However, these methods have some problems such as causing fine details lost in bright regions and/or unnatural color tones. In this paper, we propose a new low-light image enhancement method to cope with these problems. In the proposed method, a pixel is represented by a convex combination of white, black, and pure color. Then, an equi-hue plane in RGB color space is represented as a triangle whose vertices correspond to white, black, and pure color. The visibility of low-light image is improved by applying a modified gamma transform to the combination coefficients on an equi-hue plane in RGB color space. The contrast of the image is enhanced by the histogram specification method using the histogram smoothed by a filter with a kernel determined based on a gamma distribution. In the experiments, the effectiveness of the proposed method is verified by the comparison with the state-of-the-art low-light image enhancement methods.

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  • Gouki OKADA, Makoto NAKASHIZUKA
    Article type: PAPER
    Subject area: Image
    2023 Volume E106.A Issue 11 Pages 1395-1405
    Published: November 01, 2023
    Released on J-STAGE: November 01, 2023
    Advance online publication: July 21, 2023
    JOURNAL FREE ACCESS

    This paper presents a deep network based on unrolling the diffusion process with the morphological Laplacian. The diffusion process is an iterative algorithm that can solve the diffusion equation and represents time evolution with Laplacian. The diffusion process is applied to smoothing of images and has been extended with non-linear operators for various image processing tasks. In this study, we introduce the morphological Laplacian to the basic diffusion process and unwrap to deep networks. The morphological filters are non-linear operators with parameters that are referred to as structuring elements. The discrete Laplacian can be approximated with the morphological filters without multiplications. Owing to the non-linearity of the morphological filter with trainable structuring elements, the training uses error back propagation and the network of the morphology can be adapted to specific image processing applications. We introduce two extensions of the morphological Laplacian for deep networks. Since the morphological filters are realized with addition, max, and min, the error caused by the limited bit-length is not amplified. Consequently, the morphological parts of the network are implemented in unsigned 8-bit integer with single instruction multiple data set (SIMD) to achieve fast computation on small devices. We applied the proposed network to image completion and Gaussian denoising. The results and computational time are compared with other denoising algorithm and deep networks.

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  • Hojun SHIMOYAMA, Soh YOSHIDA, Takao FUJITA, Mitsuji MUNEYASU
    Article type: PAPER
    Subject area: Image
    2023 Volume E106.A Issue 11 Pages 1406-1415
    Published: November 01, 2023
    Released on J-STAGE: November 01, 2023
    Advance online publication: May 15, 2023
    JOURNAL FREE ACCESS

    Recent character detectors have been modeled using deep neural networks and have achieved high performance in various tasks, such as text detection in natural scenes and character detection in historical documents. However, existing methods cannot achieve high detection accuracy for wooden slips because of their multi-scale character sizes and aspect ratios, high character density, and close character-to-character distance. In this study, we propose a new U-Net-based character detection and localization framework that learns character regions and boundaries between characters. The proposed method enhances the learning performance of character regions by simultaneously learning the vertical and horizontal boundaries between characters. Furthermore, by adding simple and low-cost post-processing using the learned regions of character boundaries, it is possible to more accurately detect the location of a group of characters in a close neighborhood. In this study, we construct a wooden slip dataset. Experiments demonstrated that the proposed method outperformed existing character detection methods, including state-of-the-art character detection methods for historical documents.

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Regular Section
  • Lin LI, Jianhao HU
    Article type: PAPER
    Subject area: Digital Signal Processing
    2023 Volume E106.A Issue 11 Pages 1416-1423
    Published: November 01, 2023
    Released on J-STAGE: November 01, 2023
    Advance online publication: May 19, 2023
    JOURNAL FREE ACCESS

    For massive multiple-input multiple-output (MIMO) communication systems, simple linear detectors such as zero forcing (ZF) and minimum mean square error (MMSE) can achieve near-optimal detection performance with reduced computational complexity. However, such linear detectors always involve complicated matrix inversion, which will suffer from high computational overhead in the practical implementation. Due to the massive parallel-processing and efficient hardware-implementation nature, the neural network has become a promising approach to signal processing for the future wireless communications. In this paper, we first propose an efficient neural network to calculate the pseudo-inverses for any type of matrices based on the improved Newton's method, termed as the PINN. Through detailed analysis and derivation, the linear massive MIMO detectors are mapped on PINNs, which can take full advantage of the research achievements of neural networks in both algorithms and hardwares. Furthermore, an improved limited-memory Broyden-Fletcher-Goldfarb-Shanno (L-BFGS) quasi-Newton method is studied as the learning algorithm of PINNs to achieve a better performance/complexity trade-off. Simulation results finally validate the efficiency of the proposed scheme.

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  • Atsushi MATSUO, Shigeru YAMASHITA, Daniel J. EGGER
    Article type: PAPER
    Subject area: Algorithms and Data Structures
    2023 Volume E106.A Issue 11 Pages 1424-1431
    Published: November 01, 2023
    Released on J-STAGE: November 01, 2023
    Advance online publication: May 17, 2023
    JOURNAL FREE ACCESS

    Most quantum circuits require SWAP gate insertion to run on quantum hardware with limited qubit connectivity. A promising SWAP gate insertion method for blocks of commuting two-qubit gates is a predetermined swap strategy which applies layers of SWAP gates simultaneously executable on the coupling map. A good initial mapping for the swap strategy reduces the number of required swap gates. However, even when a circuit consists of commuting gates, e.g., as in the Quantum Approximate Optimization Algorithm (QAOA) or trotterized simulations of Ising Hamiltonians, finding a good initial mapping is a hard problem. We present a SAT-based approach to find good initial mappings for circuits with commuting gates transpiled to the hardware with swap strategies. Our method achieves a 65% reduction in gate count for random three-regular graphs with 500 nodes. In addition, we present a heuristic approach that combines the SAT formulation with a clustering algorithm to reduce large problems to a manageable size. This approach reduces the number of swap layers by 25% compared to both a trivial and random initial mapping for a random three-regular graph with 1000 nodes. Good initial mappings will therefore enable the study of quantum algorithms, such as QAOA and Ising Hamiltonian simulation applied to sparse problems, on noisy quantum hardware with several hundreds of qubits.

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  • Yusuke MATSUOKA
    Article type: LETTER
    Subject area: Nonlinear Problems
    2023 Volume E106.A Issue 11 Pages 1432-1435
    Published: November 01, 2023
    Released on J-STAGE: November 01, 2023
    Advance online publication: May 17, 2023
    JOURNAL FREE ACCESS

    In this paper, a circuit based on a field programmable analog array (FPAA) is proposed for three types of chaotic spiking oscillator (CSO). The input/output conversion characteristics of a specific element in the FPAA can be defined by the user. By selecting the proper characteristics, three types of CSO are realized without changing the structure of the circuit itself. Chaotic attractors are observed in a hardware experiment. It is confirmed that the dynamics of the CSOs are consistent with numerical simulations.

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  • Asahi TAKAOKA
    Article type: LETTER
    Subject area: Graphs and Networks
    2023 Volume E106.A Issue 11 Pages 1436-1439
    Published: November 01, 2023
    Released on J-STAGE: November 01, 2023
    Advance online publication: May 17, 2023
    JOURNAL FREE ACCESS

    Canonical decomposition for bipartite graphs, which was introduced by Fouquet, Giakoumakis, and Vanherpe (1999), is a decomposition scheme for bipartite graphs associated with modular decomposition. Weak-bisplit graphs are bipartite graphs totally decomposable (i.e., reducible to single vertices) by canonical decomposition. Canonical decomposition comprises series, parallel, and K+S decomposition. This paper studies a decomposition scheme comprising only parallel and K+S decomposition. We show that bipartite graphs totally decomposable by this decomposition are precisely P6-free chordal bipartite graphs. This characterization indicates that P6-free chordal bipartite graphs can be recognized in linear time using the recognition algorithm for weak-bisplit graphs presented by Giakoumakis and Vanherpe (2003).

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  • Toru HIRAOKA, Kanya GOTO
    Article type: LETTER
    Subject area: Computer Graphics
    2023 Volume E106.A Issue 11 Pages 1440-1443
    Published: November 01, 2023
    Released on J-STAGE: November 01, 2023
    Advance online publication: May 08, 2023
    JOURNAL FREE ACCESS

    We propose a non-photorealistic rendering method for automatically generating point-light-style (PLS) images from photographic images using peripheral difference filters with different window sizes. The proposed method can express PLS patterns near the edges of photographic images as dots. To verify the effectiveness of the proposed method, experiments were conducted to visually confirm PLS images generated from various photographic images.

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  • Sei-ichiro KAMATA, Tsunenori MINE
    Article type: WRITTEN DISCUSSION
    Subject area: General Fundamentals and Boundaries
    2023 Volume E106.A Issue 11 Pages 1444-1445
    Published: November 01, 2023
    Released on J-STAGE: November 01, 2023
    Advance online publication: May 08, 2023
    JOURNAL FREE ACCESS

    In 2014, the above paper entitled ‘Quasi-Linear Support Vector Machine for Nonlinear Classification’ was published by Zhou, et al. [1]. They proposed a quasi-linear kernel function for support vector machine (SVM). However, in this letter, we point out that this proposed kernel function is a part of multiple kernel functions generated by well-known multiple kernel learning which is proposed by Bach, et al. [2] in 2004. Since then, there have been a lot of related papers on multiple kernel learning with several applications [3]. This letter verifies that the main kernel function proposed by Zhou, et al. [1] can be derived using multiple kernel learning algorithms [3]. In the kernel construction, Zhou, et al. [1] used Gaussian kernels, but the multiple kernel learning had already discussed the locality of additive Gaussian kernels or other kernels in the framework [4], [5]. Especially additive Gaussian or other kernels were discussed in tutorial at major international conference ECCV2012 [6]. The authors did not discuss these matters.

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  • Bo ZHOU, Benhui CHEN, Jinglu HU
    Article type: WRITTEN DISCUSSION
    2023 Volume E106.A Issue 11 Pages 1446-1449
    Published: November 01, 2023
    Released on J-STAGE: November 01, 2023
    Advance online publication: May 08, 2023
    JOURNAL FREE ACCESS

    We thank Kamata et al. (2023) [1] for their interest in our work [2], and for providing an explanation of the quasi-linear kernel from a viewpoint of multiple kernel learning. In this letter, we first give a summary of the quasi-linear SVM. Then we provide a discussion on the novelty of quasi-linear kernels against multiple kernel learning. Finally, we explain the contributions of our work [2].

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