Keyword Search Result

[Keyword] quality(486hit)

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  • Stochastic Dual Coordinate Ascent for Learning Sign Constrained Linear Predictors Open Access

    Yuya TAKADA  Rikuto MOCHIDA  Miya NAKAJIMA  Syun-suke KADOYA  Daisuke SANO  Tsuyoshi KATO  

     
    PAPER-Artificial Intelligence, Data Mining

      Pubricized:
    2024/08/08
      Vol:
    E107-D No:12
      Page(s):
    1493-1503

    Sign constraints are a handy representation of domain-specific prior knowledge that can be incorporated to machine learning. This paper presents new stochastic dual coordinate ascent (SDCA) algorithms that find the minimizer of the empirical risk under the sign constraints. Generic surrogate loss functions can be plugged into the proposed algorithm with the strong convergence guarantee inherited from the vanilla SDCA. The prediction performance is demonstrated on the classification task for microbiological water quality analysis.

  • Compensation of Communication Latency in Remote Monitoring Systems by Video Prediction Open Access

    Toshio SATO  Yutaka KATSUYAMA  Xin QI  Zheng WEN  Kazuhiko TAMESUE  Wataru KAMEYAMA  Yuichi NAKAMURA  Jiro KATTO  Takuro SATO  

     
    PAPER

      Vol:
    E107-B No:12
      Page(s):
    945-954

    Remote video monitoring over networks inevitably introduces a certain degree of communication latency. Although numerous studies have been conducted to reduce latency in network systems, achieving “zero-latency” is fundamentally impossible for video monitoring. To address this issue, we investigate a practical method to compensate for latency in video monitoring using video prediction techniques. We apply the lightweight PredNet to predict future frames, and their image qualities are evaluated through quantitative image quality metrics and subjective assessment. The evaluation results suggest that for simple movements of the robot arm, the prediction time to generate future frames can tolerate up to 333 ms. The video prediction method is integrated into a remote monitoring system, and its processing time is also evaluated. We define the object-to-display latency for video monitoring and explore the potential for realizing a zero-latency remote video monitoring system. The evaluation, involving simultaneous capture of the robot arm’s movement and the display of the remote monitoring system, confirms the feasibility of compensating for the object-to-display latency of several hundred milliseconds by using video prediction. Experimental results demonstrate that our approach can function as a new compensation method for communication latency.

  • Long-Term Adaptive Bitrate Control Mechanism Open Access

    Pierre LEBRETON  Kazuhisa YAMAGISHI  

     
    PAPER-Multimedia Systems for Communications

      Vol:
    E107-B No:11
      Page(s):
    817-830

    Adaptive bitrate (ABR) video streaming is an important application on the Internet. To ensure that users enjoy high-quality services, ABR control mechanisms need to be designed that select chunks wisely on the basis of the available network throughput. To address the chunk selection problem, this paper describes an adaptive bitrate control mechanism that leverages long-term throughput information in the chunk selection process. While previous work has considered how quality should be requested on a per-chunk basis, the proposed method increases the timeframe of the analysis and allows higher quality of experience (QoE) to be reached. This is done by appropriately selecting a sequence of consecutive chunks’ quality values instead of a single chunk’s value. Simulation results are reported on a large variety of real-world network conditions and various throughput prediction algorithms and show the benefit of the proposed method over conventional ABR control mechanisms.

  • Load-Independent Class-E Design with Load Adjustment Circuit Inverter Considering External Quality Factor Open Access

    Akihiko ISHIWATA  Yasumasa NAKA  Masaya TAMURA  

     
    PAPER

      Pubricized:
    2024/04/09
      Vol:
    E107-C No:10
      Page(s):
    315-322

    The load-independent zero-voltage switching class-E inverter has garnered considerable interest as an essential component in wireless power transfer systems. This inverter achieves high efficiency across a broad spectrum of load conditions by incorporating a load adjustment circuit (LAC) subsequent to the resonant filter. Nevertheless, the presence of the LAC influences the output impedance of the inverter, thereby inducing a divergence between the targeted and observed output power, even in ideal lossless simulations. Consequently, iterative adjustments to component values are required via an LC element implementation. We introduce a novel design methodology that incorporates an external quality factor on the side of the resonant filter, inclusive of the LAC. Thus, the optimized circuit achieves the intended output power without necessitating alterations in component values.

  • CTU-Level Adaptive QP Offset Algorithm for V-PCC Using JND and Spatial Complexity Open Access

    Mengmeng ZHANG  Zeliang ZHANG  Yuan LI  Ran CHENG  Hongyuan JING  Zhi LIU  

     
    LETTER-Coding Theory

      Vol:
    E107-A No:8
      Page(s):
    1400-1403

    Point cloud video contains not only color information but also spatial position information and usually has large volume of data. Typical rate distortion optimization algorithms based on Human Visual System only consider the color information, which limit the coding performance. In this paper, a Coding Tree Unit (CTU) level quantization parameter (QP) adjustment algorithm based on JND and spatial complexity is proposed to improve the subjective and objective quality of Video-Based Point Cloud Compression (V-PCC). Firstly, it is found that the JND model is degraded at CTU level for attribute video due to the pixel filling strategy of V-PCC, and an improved JND model is designed using the occupancy map. Secondly, a spatial complexity detection metric is designed to measure the visual importance of each CTU. Finally, a CTU-level QP adjustment scheme based on both JND levels and visual importance is proposed for geometry and attribute video. The experimental results show that, compared with the latest V-PCC (TMC2-18.0) anchors, the BD-rate is reduced by -2.8% and -3.2% for D1 and D2 metrics, respectively, and the subjective quality is improved significantly.

  • Output Feedback Ultimate Boundedness Control with Decentralized Event-Triggering Open Access

    Koichi KITAMURA  Koichi KOBAYASHI  Yuh YAMASHITA  

     
    PAPER

      Pubricized:
    2023/11/10
      Vol:
    E107-A No:5
      Page(s):
    770-778

    In cyber-physical systems (CPSs) that interact between physical and information components, there are many sensors that are connected through a communication network. In such cases, the reduction of communication costs is important. Event-triggered control that the control input is updated only when the measured value is widely changed is well known as one of the control methods of CPSs. In this paper, we propose a design method of output feedback controllers with decentralized event-triggering mechanisms, where the notion of uniformly ultimate boundedness is utilized as a control specification. Using this notion, we can guarantee that the state stays within a certain set containing the origin after a certain time, which depends on the initial state. As a result, the number of times that the event occurs can be decreased. First, the design problem is formulated. Next, this problem is reduced to a BMI (bilinear matrix inequality) optimization problem, which can be solved by solving multiple LMI (linear matrix inequality) optimization problems. Finally, the effectiveness of the proposed method is presented by a numerical example.

  • More Efficient Adaptively Secure Lattice-Based IBE with Equality Test in the Standard Model

    Kyoichi ASANO  Keita EMURA  Atsushi TAKAYASU  

     
    PAPER

      Pubricized:
    2023/10/05
      Vol:
    E107-A No:3
      Page(s):
    248-259

    Identity-based encryption with equality test (IBEET) is a variant of identity-based encryption (IBE), in which any user with trapdoors can check whether two ciphertexts are encryption of the same plaintext. Although several lattice-based IBEET schemes have been proposed, they have drawbacks in either security or efficiency. Specifically, most IBEET schemes only satisfy selective security, while public keys of adaptively secure schemes in the standard model consist of matrices whose numbers are linear in the security parameter. In other words, known lattice-based IBEET schemes perform poorly compared to the state-of-the-art lattice-based IBE schemes (without equality test). In this paper, we propose a semi-generic construction of CCA-secure lattice-based IBEET from a certain class of lattice-based IBE schemes. As a result, we obtain the first lattice-based IBEET schemes with adaptive security and CCA security in the standard model without sacrificing efficiency. This is because, our semi-generic construction can use several state-of-the-art lattice-based IBE schemes as underlying schemes, e.g. Yamada's IBE scheme (CRYPTO'17).

  • Meta-Bound on Lower Bounds of Bayes Risk in Parameter Estimation

    Shota SAITO  

     
    PAPER-Estimation

      Pubricized:
    2023/08/09
      Vol:
    E107-A No:3
      Page(s):
    503-509

    Information-theoretic lower bounds of the Bayes risk have been investigated for a problem of parameter estimation in a Bayesian setting. Previous studies have proven the lower bound of the Bayes risk in a different manner and characterized the lower bound via different quantities such as mutual information, Sibson's α-mutual information, f-divergence, and Csiszár's f-informativity. In this paper, we introduce an inequality called a “meta-bound for lower bounds of the Bayes risk” and show that the previous results can be derived from this inequality.

  • An Evaluation of the Impact of Distance on Perceptual Quality of Textured 3D Meshes

    Duc NGUYEN  Tran THUY HIEN  Huyen T. T. TRAN  Truong THU HUONG  Pham NGOC NAM  

     
    LETTER

      Pubricized:
    2023/09/25
      Vol:
    E107-D No:1
      Page(s):
    39-43

    Distance-aware quality adaptation is a potential approach to reduce the resource requirement for the transmission and rendering of textured 3D meshes. In this paper, we carry out a subjective experiment to investigate the effects of the distance from the camera on the perceptual quality of textured 3D meshes. Besides, we evaluate the effectiveness of eight image-based objective quality metrics in representing the user's perceptual quality. Our study found that the perceptual quality in terms of mean opinion score increases as the distance from the camera increases. In addition, it is shown that normalized mutual information (NMI), a full-reference objective quality metric, is highly correlated with subjective scores.

  • Quality and Transferred Data Based Video Bitrate Control Method for Web-Conferencing Open Access

    Masahiro YOKOTA  Kazuhisa YAMAGISHI  

     
    PAPER-Multimedia Systems for Communications

      Pubricized:
    2023/10/13
      Vol:
    E107-B No:1
      Page(s):
    272-285

    In this paper, the quality and transferred data based video bitrate control method for web-conferencing services is proposed, aiming to reduce transferred data by suppressing excessive quality. In web-conferencing services, the video bitrate is generally controlled in accordance with the network conditions (e.g., jitter and packet loss rate) to improve users' quality. However, in such a control, the bitrate is excessively high when the network conditions is sufficiently high (e.g., high throughput and low jitter), which causes an increased transferred data volume. The increased volume of data transferred leads to increased operational costs, such as network costs for service providers. To solve this problem, we developed a method to control the video bitrate of each user to achieve the required quality determined by the service provider. This method is implemented in an actual web-conferencing system and evaluated under various conditions. It was shown that the bitrate could be controlled in accordance with the required quality to reduce the transferred data volume.

  • Analysis and Identification of Root Cause of 5G Radio Quality Deterioration Using Machine Learning

    Yoshiaki NISHIKAWA  Shohei MARUYAMA  Takeo ONISHI  Eiji TAKAHASHI  

     
    PAPER

      Pubricized:
    2023/06/02
      Vol:
    E106-B No:12
      Page(s):
    1286-1292

    It has become increasingly important for industries to promote digital transformation by utilizing 5G and industrial internet of things (IIoT) to improve productivity. To protect IIoT application performance (work speed, productivity, etc.), it is often necessary to satisfy quality of service (QoS) requirements precisely. For this purpose, there is an increasing need to automatically identify the root causes of radio-quality deterioration in order to take prompt measures when the QoS deteriorates. In this paper, a method for identifying the root cause of 5G radio-quality deterioration is proposed that uses machine learning. This Random Forest based method detects the root cause, such as distance attenuation, shielding, fading, or their combination, by analyzing the coefficients of a quadratic polynomial approximation in addition to the mean values of time-series data of radio quality indicators. The detection accuracy of the proposed method was evaluated in a simulation using the MATLAB 5G Toolbox. The detection accuracy of the proposed method was found to be 98.30% when any of the root causes occurs independently, and 83.13% when the multiple root causes occur simultaneously. The proposed method was compared with deep-learning methods, including bidirectional long short-term memory (bidirectional-LSTM) or one-dimensional convolutional neural network (1D-CNN), that directly analyze the time-series data of the radio quality, and the proposed method was found to be more accurate than those methods.

  • Power Allocation with QoS and Max-Min Fairness Constraints for Downlink MIMO-NOMA System Open Access

    Jia SHAO  Cong LI  Taotao YAN  

     
    PAPER-Transmission Systems and Transmission Equipment for Communications

      Pubricized:
    2023/09/06
      Vol:
    E106-B No:12
      Page(s):
    1411-1417

    Non-orthogonal multipe access based multiple-input multiple-output system (MIMO-NOMA) has been widely used in improving user's achievable rate of millimeter wave (mmWave) communication. To meet different requirements of each user in multi-user beams, this paper proposes a power allocation algorithm to satisfy the quality of service (QoS) of head user while maximizing the minimum rate of edge users from the perspective of max-min fairness. Suppose that the user who is closest to the base station (BS) is the head user and the other users are the edge users in each beam in this paper. Then, an optimization problem model of max-min fairness criterion is developed under the constraints of users' minimum rate requirements and the total transmitting power of the BS. The bisection method and Karush-Kuhn-Tucher (KKT) conditions are used to solve this complex non-convex problem, and simulation results show that both the minimum achievable rates of edge users and the average rate of all users are greatly improved significantly compared with the traditional MIMO-NOMA, which only consider max-min fairness of users.

  • Shift Quality Classifier Using Deep Neural Networks on Small Data with Dropout and Semi-Supervised Learning

    Takefumi KAWAKAMI  Takanori IDE  Kunihito HOKI  Masakazu MURAMATSU  

     
    PAPER-Pattern Recognition

      Pubricized:
    2023/09/05
      Vol:
    E106-D No:12
      Page(s):
    2078-2084

    In this paper, we apply two methods in machine learning, dropout and semi-supervised learning, to a recently proposed method called CSQ-SDL which uses deep neural networks for evaluating shift quality from time-series measurement data. When developing a new Automatic Transmission (AT), calibration takes place where many parameters of the AT are adjusted to realize pleasant driving experience in all situations that occur on all roads around the world. Calibration requires an expert to visually assess the shift quality from the time-series measurement data of the experiments each time the parameters are changed, which is iterative and time-consuming. The CSQ-SDL was developed to shorten time consumed by the visual assessment, and its effectiveness depends on acquiring a sufficient number of data points. In practice, however, data amounts are often insufficient. The methods proposed here can handle such cases. For the cases wherein only a small number of labeled data points is available, we propose a method that uses dropout. For those cases wherein the number of labeled data points is small but the number of unlabeled data is sufficient, we propose a method that uses semi-supervised learning. Experiments show that while the former gives moderate improvement, the latter offers a significant performance improvement.

  • A Method to Improve the Quality of Point-Light-Style Images Using Peripheral Difference Filters with Different Window Sizes

    Toru HIRAOKA  Kanya GOTO  

     
    LETTER-Computer Graphics

      Pubricized:
    2023/05/08
      Vol:
    E106-A No:11
      Page(s):
    1440-1443

    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.

  • Chunk Grouping Method to Estimate Available Bandwidth for Adaptive Bitrate Live Streaming

    Daichi HATTORI  Masaki BANDAI  

     
    PAPER-Network

      Pubricized:
    2023/07/24
      Vol:
    E106-B No:11
      Page(s):
    1133-1142

    The Common Media Application Format (CMAF) is a standard for adaptive bitrate live streaming. The CMAF adapts chunk encoding and enables low-latency live streaming. However, conventional bandwidth estimation for adaptive bitrate streaming underestimates bandwidth because download time is affected not only by network bandwidth but also by the idle times between chunks in the same segment. Inaccurate bandwidth estimation decreases the quality of experience of the streaming client. In this paper, we propose a chunk-grouping method to estimate the available bandwidth for adaptive bitrate live streaming. In the proposed method, by delaying HTTP request transmission and bandwidth estimation using grouped chunks, the client estimates the available bandwidth accurately due to there being no idle times in the grouped chunks. In addition, we extend the proposed method to dynamically change the number of grouping chunks according to buffer length during downloading of the previous segment. We evaluate the proposed methods under various network conditions in order to confirm the effectiveness of the proposed methods.

  • No Reference Quality Assessment of Contrast-Distorted SEM Images Based on Global Features

    Fengchuan XU  Qiaoyue LI  Guilu ZHANG  Yasheng CHANG  Zixuan ZHENG  

     
    LETTER-Image Processing and Video Processing

      Pubricized:
    2023/07/28
      Vol:
    E106-D No:11
      Page(s):
    1935-1938

    This letter presents a global feature-based method for evaluating the no reference quality of scanning electron microscopy (SEM) contrast-distorted images. Based on the characteristics of SEM images and the human visual system, the global features of SEM images are extracted as the score for evaluating image quality. In this letter, the texture information of SEM images is first extracted using a low-pass filter with orientation, and the amount of information in the texture part is calculated based on the entropy reflecting the complexity of the texture. The singular values with four scales of the original image are then calculated, and the amount of structural change between different scales is calculated and averaged. Finally, the amounts of texture information and structural change are pooled to generate the final quality score of the SEM image. Experimental results show that the method can effectively evaluate the quality of SEM contrast-distorted images.

  • Proof of Concept of Optimum Radio Access Technology Selection Scheme with Radars for Millimeter-Wave Networks Open Access

    Mitsuru UESUGI  Yoshiaki SHINAGAWA  Kazuhiro KOSAKA  Toru OKADA  Takeo UETA  Kosuke ONO  

     
    PAPER

      Pubricized:
    2023/05/23
      Vol:
    E106-B No:9
      Page(s):
    778-785

    With the rapid increase in the amount of data communication in 5G networks, there is a strong demand to reduce the power of the entire network, so the use of highly power-efficient millimeter-wave (mm-wave) networks is being considered. However, while mm-wave communication has high power efficiency, it has strong straightness, so it is difficult to secure stable communication in an environment with blocking. Especially when considering use cases such as autonomous driving, continuous communication is required when transmitting streaming data such as moving images taken by vehicles, it is necessary to compensate the blocking problem. For this reason, the authors examined an optimum radio access technology (RAT) selection scheme which selects mm-wave communication when mm-wave can be used and select wide-area macro-communication when mm-wave may be blocked. In addition, the authors implemented the scheme on a prototype device and conducted field tests and confirmed that mm-wave communication and macro communication were switched at an appropriate timing.

  • Quality Enhancement of Conventional Compression with a Learned Side Bitstream

    Takahiro NARUKO  Hiroaki AKUTSU  Koki TSUBOTA  Kiyoharu AIZAWA  

     
    LETTER-Image Processing and Video Processing

      Pubricized:
    2023/04/25
      Vol:
    E106-D No:8
      Page(s):
    1296-1299

    We propose Quality Enhancement via a Side bitstream Network (QESN) technique for lossy image compression. The proposed QESN utilizes the network architecture of deep image compression to produce a bitstream for enhancing the quality of conventional compression. We also present a loss function that directly optimizes the Bjontegaard delta bit rate (BD-BR) by using a differentiable model of a rate-distortion curve. Experimental results show that QESN improves the rate by 16.7% in the BD-BR compared to Better Portable Graphics.

  • Metadata-Based Quality-Estimation Model for Tile-Based Omnidirectional Video Streaming Open Access

    Yuichiro URATA  Masanori KOIKE  Kazuhisa YAMAGISHI  Noritsugu EGI  

     
    PAPER-Multimedia Systems for Communications

      Pubricized:
    2022/11/15
      Vol:
    E106-B No:5
      Page(s):
    478-488

    In this paper, a metadata-based quality-estimation model is proposed for tile-based omnidirectional video streaming services, aiming to realize quality monitoring during service provision. In the tile-based omnidirectional video (ODV) streaming services, the ODV is divided into tiles, and the high-quality tiles and the low-quality tiles are distributed in accordance with the user's viewing direction. When the user changes the viewing direction, the user temporarily watches video with the low-quality tiles. In addition, the longer the time (delay time) until the high-quality tile for the new viewing direction is downloaded, the longer the viewing time of video with the low-quality tile, and thus the delay time affects quality. From the above, the video quality of the low-quality tiles and the delay time significantly impact quality, and these factors need to be considered in the quality-estimation model. We develop quality-estimation models by extending the conventional quality-estimation models for 2D adaptive streaming. We also show that the quality-estimation model using the bitrate, resolution, and frame rate of high- and low-quality tiles and that the delay time has sufficient estimation accuracy based on the results of subjective quality evaluation experiments.

  • A Generic Construction of CCA-Secure Identity-Based Encryption with Equality Test against Insider Attacks

    Keita EMURA  Atsushi TAKAYASU  

     
    PAPER

      Pubricized:
    2022/05/30
      Vol:
    E106-A No:3
      Page(s):
    193-202

    Identity-based encryption with equality test (IBEET) is a generalization of the traditional identity-based encryption (IBE) and public key searchable encryption, where trapdoors enable users to check whether two ciphertexts of distinct identities are encryptions of the same plaintext. By definition, IBEET cannot achieve indistinguishability security against insiders, i.e., users who have trapdoors. To address this issue, IBEET against insider attacks (IBEETIA) was later introduced as a dual primitive. While all users of IBEETIA are able to check whether two ciphertexts are encryptions of the same plaintext, only users who have tokens are able to encrypt plaintexts. Hence, IBEETIA is able to achieve indistinguishability security. On the other hand, the definition of IBEETIA weakens the notion of IBE due to its encryption inability. Nevertheless, known schemes of IBEETIA made use of rich algebraic structures such as bilinear groups and lattices. In this paper, we propose a generic construction of IBEETIA without resorting to rich algebraic structures. In particular, the only building blocks of the proposed construction are symmetric key encryption and pseudo-random permutations in the standard model. If a symmetric key encryption scheme satisfies CCA security, our proposed IBEETIA scheme also satisfies CCA security.

1-20hit(486hit)

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