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2401-2420hit(42807hit)

  • Differentially Private Neural Networks with Bounded Activation Function

    Kijung JUNG  Hyukki LEE  Yon Dohn CHUNG  

     
    LETTER-Artificial Intelligence, Data Mining

      Pubricized:
    2021/03/18
      Vol:
    E104-D No:6
      Page(s):
    905-908

    Deep learning has shown outstanding performance in various fields, and it is increasingly deployed in privacy-critical domains. If sensitive data in the deep learning model are exposed, it can cause serious privacy threats. To protect individual privacy, we propose a novel activation function and stochastic gradient descent for applying differential privacy to deep learning. Through experiments, we show that the proposed method can effectively protect the privacy and the performance of proposed method is better than the previous approaches.

  • A Partial Matching Convolution Neural Network for Source Retrieval of Plagiarism Detection

    Leilei KONG  Yong HAN  Haoliang QI  Zhongyuan HAN  

     
    LETTER-Natural Language Processing

      Pubricized:
    2021/03/03
      Vol:
    E104-D No:6
      Page(s):
    915-918

    Source retrieval is the primary task of plagiarism detection. It searches the documents that may be the sources of plagiarism to a suspicious document. The state-of-the-art approaches usually rely on the classical information retrieval models, such as the probability model or vector space model, to get the plagiarism sources. However, the goal of source retrieval is to obtain the source documents that contain the plagiarism parts of the suspicious document, rather than to rank the documents relevant to the whole suspicious document. To model the “partial matching” between documents, this paper proposes a Partial Matching Convolution Neural Network (PMCNN) for source retrieval. In detail, PMCNN exploits a sequential convolution neural network to extract the plagiarism patterns of contiguous text segments. The experimental results on PAN 2013 and PAN 2014 plagiarism source retrieval corpus show that PMCNN boosts the performance of source retrieval significantly, outperforming other state-of-the-art document models.

  • Automatically Generated Data Mining Tools for Complex System Operator's Condition Detection Using Non-Contact Vital Sensing Open Access

    Shakhnaz AKHMEDOVA  Vladimir STANOVOV  Sophia VISHNEVSKAYA  Chiori MIYAJIMA  Yukihiro KAMIYA  

     
    INVITED PAPER-Navigation, Guidance and Control Systems

      Pubricized:
    2020/12/24
      Vol:
    E104-B No:6
      Page(s):
    571-579

    This study is focused on the automated detection of a complex system operator's condition. For example, in this study a person's reaction while listening to music (or not listening at all) was determined. For this purpose various well-known data mining tools as well as ones developed by authors were used. To be more specific, the following techniques were developed and applied for the mentioned problems: artificial neural networks and fuzzy rule-based classifiers. The neural networks were generated by two modifications of the Differential Evolution algorithm based on the NSGA and MOEA/D schemes, proposed for solving multi-objective optimization problems. Fuzzy logic systems were generated by the population-based algorithm called Co-Operation of Biology Related Algorithms or COBRA. However, firstly each person's state was monitored. Thus, databases for problems described in this study were obtained by using non-contact Doppler sensors. Experimental results demonstrated that automatically generated neural networks and fuzzy rule-based classifiers can properly determine the human condition and reaction. Besides, proposed approaches outperformed alternative data mining tools. However, it was established that fuzzy rule-based classifiers are more accurate and interpretable than neural networks. Thus, they can be used for solving more complex problems related to the automated detection of an operator's condition.

  • Cuffless Blood Pressure Monitors: Principles, Standards and Approval for Medical Use Open Access

    Toshiyo TAMURA  

     
    INVITED PAPER-Sensing

      Pubricized:
    2020/12/24
      Vol:
    E104-B No:6
      Page(s):
    580-586

    Cuffless blood pressure (BP) monitors are noninvasive devices that measure systolic and diastolic BP without an inflatable cuff. They are easy to use, safe, and relatively accurate for resting-state BP measurement. Although commercially available from online retailers, BP monitors must be approved or certificated by medical regulatory bodies for clinical use. Cuffless BP monitoring devices also need to be approved; however, only the Institute of Electrical and Electronics Engineers (IEEE) certify these devices. In this paper, the principles of cuffless BP monitors are described, and the current situation regarding BP monitor standards and approval for medical use is discussed.

  • Analysis and Design of Aggregate Demand Response Systems Based on Controllability Open Access

    Kazuhiro SATO  Shun-ichi AZUMA  

     
    PAPER-Mathematical Systems Science

      Pubricized:
    2020/12/01
      Vol:
    E104-A No:6
      Page(s):
    940-948

    We address analysis and design problems of aggregate demand response systems composed of various consumers based on controllability to facilitate to design automated demand response machines that are installed into consumers to automatically respond to electricity price changes. To this end, we introduce a controllability index that expresses the worst-case error between the expected total electricity consumption and the electricity supply when the best electricity price is chosen. The analysis problem using the index considers how to maximize the controllability of the whole consumer group when the consumption characteristic of each consumer is not fixed. In contrast, the design problem considers the whole consumer group when the consumption characteristics of a part of the group are fixed. By solving the analysis problem, we first clarify how the controllability, average consumption characteristics of all consumers, and the number of selectable electricity prices are related. In particular, the minimum value of the controllability index is determined by the number of selectable electricity prices. Next, we prove that the design problem can be solved by a simple linear optimization. Numerical experiments demonstrate that our results are able to increase the controllability of the overall consumer group.

  • Rapid Recovery by Maximizing Page-Mapping Logs Deactivation

    Jung-Hoon KIM  

     
    LETTER-Software System

      Pubricized:
    2021/02/25
      Vol:
    E104-D No:6
      Page(s):
    885-889

    As NAND flash-based storage has been settled, a flash translation layer (FTL) has been in charge of mapping data addresses on NAND flash memory. Many FTLs implemented various mapping schemes, but the amount of mapping data depends on the mapping level. However, the FTL should contemplate mapping consistency irrespective of how much mapping data dwell in the storage. Furthermore, the recovery cost by the inconsistency needs to be considered for a faster storage reboot time. This letter proposes a novel method that enhances the consistency for a page-mapping level FTL running a legacy logging policy. Moreover, the recovery cost of page mappings also decreases. The novel method is to adopt a virtually-shrunk segment and deactivate page-mapping logs by assembling and storing the segments. This segment scheme already gave embedded NAND flash-based storage enhance its response time in our previous study. In addition to that improved result, this novel plan maximizes the page-mapping consistency, therefore improves the recovery cost compared with the legacy page-mapping FTL.

  • Highly Reliable Radio Access Scheme by Duplicate Transmissions via Multiple Frequency Channels and Suppressed Useless Transmission under Interference from Other Systems

    Hideya SO  Takafumi FUJITA  Kento YOSHIZAWA  Maiko NAYA  Takashi SHIMIZU  

     
    PAPER-Terrestrial Wireless Communication/Broadcasting Technologies

      Pubricized:
    2020/12/04
      Vol:
    E104-B No:6
      Page(s):
    696-704

    This paper proposes a novel radio access scheme that uses duplicated transmission via multiple frequency channels to achieve mission critical Internet of Things (IoT) services requiring highly reliable wireless communications; the interference constraints that yield the required reliability are revealed. To achieve mission critical IoT services by wireless communication, it is necessary to improve reliability in addition to satisfying the required transmission delay time. Reliability is defined as the packet arrival rate without exceeding the desired transmission delay time. Traffic of the own system and interference from the other systems using the same frequency channel such as unlicensed bands degrades the reliability. One solution is the frequency/time diversity technique. However, these techniques may not achieve the required reliability because of the time taken to achieve the correct reception. This paper proposes a novel scheme that transmits duplicate packets utilizing multiple wireless interfaces over multiple frequency channels. It also proposes a suppressed duplicate transmission (SDT) scheme, which prevents the wastage of radio resources. The proposed scheme achieves the same reliable performance as the conventional scheme but has higher tolerance against interference than retransmission. We evaluate the relationship between the reliability and the occupation time ratio where the interference occupation time ratio is defined as the usage ratio of the frequency resources occupied by the other systems. We reveal the upper bound of the interference occupation time ratio for each frequency channel, which is needed if channel selection control is to achieve the required reliability.

  • Scene Adaptive Exposure Time Control for Imaging and Apparent Motion Sensor Open Access

    Misaki SHIKAKURA  Yusuke KAMEDA  Takayuki HAMAMOTO  

     
    LETTER

      Pubricized:
    2021/01/07
      Vol:
    E104-A No:6
      Page(s):
    907-911

    This paper reports the evolution and application potential of image sensors with high-speed brightness gradient sensors. We propose an adaptive exposure time control method using the apparent motion estimated by this sensor, and evaluate results for the change in illuminance and global / local motion.

  • On CSS Unsatisfiability Problem in the Presense of DTDs

    Nobutaka SUZUKI  Takuya OKADA  Yeondae KWON  

     
    PAPER-Data Engineering, Web Information Systems

      Pubricized:
    2021/03/10
      Vol:
    E104-D No:6
      Page(s):
    801-815

    Cascading Style Sheets (CSS) is a popular language for describing the styles of XML documents as well as HTML documents. To resolve conflicts among CSS rules, CSS has a mechanism called specificity. For a DTD D and a CSS code R, due to specificity R may contain “unsatisfiable” rules under D, e.g., rules that are not applied to any element of any document valid for D. In this paper, we consider the problem of detecting unsatisfiable CSS rules under DTDs. We focus on CSS fragments in which descendant, child, adjacent sibling, and general sibling combinators are allowed. We show that the problem is coNP-hard in most cases, even if only one of the four combinators is allowed and under very restricted DTDs. We also show that the problem is in coNP or PSPACE depending on restrictions on DTDs and CSS. Finally, we present four conditions under which the problem can be solved in polynomial time.

  • A Study on Decoupling Method for Two PIFAs Using Parasitic Elements and Bridge Line

    Quang Quan PHUNG  Tuan Hung NGUYEN  Naobumi MICHISHITA  Hiroshi SATO  Yoshio KOYANAGI  Hisashi MORISHITA  

     
    PAPER-Antennas and Propagation

      Pubricized:
    2020/12/22
      Vol:
    E104-B No:6
      Page(s):
    630-638

    In this study, a novel decoupling method using parasitic elements (PEs) connected by a bridge line (BL) for two planar inverted-F antennas (PIFAs) is proposed. The proposed method is developed from a well-known decoupling method that uses a BL to directly connect antenna elements. When antenna elements are connected directly by a BL, strong mutual coupling can be reduced, but the resonant frequency shifts to a different frequency. Hence, to shift the resonant frequency toward the desired frequency, the original size of the antenna elements must be adjusted. This is disadvantageous if the method is applied in cases where the design conditions render it difficult to connect the antennas directly or adjust the original antenna size. Therefore, to easily reduce mutual coupling in such a case, a decoupling method that does not require both connecting antennas directly and adjusting the original antenna size is necessitated. This study demonstrates that using PEs connected by a BL reduces the mutual coupling from -6.6 to -14.1dB, and that the resonant frequency is maintained at the desired frequency (2.0GHz) without having to adjust the original PIFAs size. In addition, impedance matching can be adjusted to the desired frequency, resulting in an improved total antenna efficiency from 77.4% to 94.6%. This method is expected to be a simple and effective approach for reducing the mutual coupling between larger numbers of PIFA elements in the future.

  • Preliminary Performance Analysis of Distributed DNN Training with Relaxed Synchronization

    Koichi SHIRAHATA  Amir HADERBACHE  Naoto FUKUMOTO  Kohta NAKASHIMA  

     
    BRIEF PAPER

      Pubricized:
    2020/12/01
      Vol:
    E104-C No:6
      Page(s):
    257-260

    Scalability of distributed DNN training can be limited by slowdown of specific processes due to unexpected hardware failures. We propose a dynamic process exclusion technique so that training throughput is maximized. Our evaluation using 32 processes with ResNet-50 shows that our proposed technique reduces slowdown by 12.5% to 50% without accuracy loss through excluding the slow processes.

  • Evaluation of the Dynamic Characteristics of Microdroplets by Vibration

    Kosuke FUJISHIRO  Satomitsu IMAI  

     
    BRIEF PAPER

      Pubricized:
    2020/12/01
      Vol:
    E104-C No:6
      Page(s):
    210-212

    In fields such as medicine and chemistry, methods for transporting microdroplets are currently necessitated, which include the analysis of reagents, mixing, and separation. As microdroplets become finer, their movement becomes difficult to control as a result of surface tension. This has resulted in the use of an excessive amount of reagents. In this study, we evaluated the dynamic characteristics of microdroplets and the excitation force. Microdroplets were dropped onto a tilted glass substrate, and the displacement of the microdroplets was measured while changing the droplet amount, vibration frequency, and vibration direction. Moreover, the behavior of the droplet just before it started to move was observed, and the relationship between the displacement of the minute droplet and the vibration force was compared and examined.

  • The Analysis of Accommodation Response and Convergence Eye Movement When Viewing 8K Images

    Miho SHINOHARA  Reiko KOYAMA  Shinya MOCHIDUKI  Mitsuho YAMADA  

     
    LETTER

      Pubricized:
    2020/12/15
      Vol:
    E104-A No:6
      Page(s):
    902-906

    We paid attention the amount of change for each resolution by specifying the gaze position of images, and measured accommodation and convergence eye movement when watching high-resolution images. Change of convergence angle and accommodation were like the actual depth composition in the image when images were presented in the high-resolution.

  • FOREWORD Open Access

    Shinji SUGAWARA  

     
    FOREWORD

      Vol:
    E104-D No:5
      Page(s):
    562-562
  • Deep Clustering for Improved Inter-Cluster Separability and Intra-Cluster Homogeneity with Cohesive Loss

    Byeonghak KIM  Murray LOEW  David K. HAN  Hanseok KO  

     
    LETTER-Artificial Intelligence, Data Mining

      Pubricized:
    2021/01/28
      Vol:
    E104-D No:5
      Page(s):
    776-780

    To date, many studies have employed clustering for the classification of unlabeled data. Deep separate clustering applies several deep learning models to conventional clustering algorithms to more clearly separate the distribution of the clusters. In this paper, we employ a convolutional autoencoder to learn the features of input images. Following this, k-means clustering is conducted using the encoded layer features learned by the convolutional autoencoder. A center loss function is then added to aggregate the data points into clusters to increase the intra-cluster homogeneity. Finally, we calculate and increase the inter-cluster separability. We combine all loss functions into a single global objective function. Our new deep clustering method surpasses the performance of existing clustering approaches when compared in experiments under the same conditions.

  • Light-YOLOv3: License Plate Detection in Multi-Vehicle Scenario

    Yuchao SUN  Qiao PENG  Dengyin ZHANG  

     
    PAPER-Artificial Intelligence, Data Mining

      Pubricized:
    2021/02/22
      Vol:
    E104-D No:5
      Page(s):
    723-728

    With the development of the Internet of Vehicles, License plate detection technology is widely used, e.g., smart city and edge senor monitor. However, traditional license plate detection methods are based on the license plate edge detection, only suitable for limited situation, such as, wealthy light and favorable camera's angle. Fortunately, deep learning networks represented by YOLOv3 can solve the problem, relying on strict condition. Although YOLOv3 make it better to detect large targets, its low performance in detecting small targets and lack of the real-time interactively. Motivated by this, we present a faster and lightweight YOLOv3 model for multi-vehicle or under-illuminated images scenario. Generally, our model can serves as a guideline for optimizing neural network in multi-vehicle scenario.

  • Angle Adjustment for Sampling Frequency Offset Estimation of OFDM-Based WLANs

    Xiaoping ZHOU  Bin WU  Kan ZHENG  Hui ZHAO  

     
    LETTER-Communication Theory and Signals

      Pubricized:
    2020/11/12
      Vol:
    E104-A No:5
      Page(s):
    834-837

    In this letter, an angle adjustment method is proposed to improve the accuracy of the sampling frequency offset (SFO) estimation for the very high throughput wireless local area networks (WLANs). This angle adjustment can work together with existing least square (LS) and weighted least square (WLS) to achieve better system performance. Simulation results show that, the angle adjustment can help LS and WLS to get better pocket error rate (PER).

  • Spatial Single Dimensional Mode Based De-Multiplexer Using Slab Waveguide

    Haisong JIANG  Mahmoud NASEF  Kiichi HAMAMOTO  

     
    BRIEF PAPER-Optoelectronics

      Pubricized:
    2020/10/19
      Vol:
    E104-C No:5
      Page(s):
    164-167

    This paper reports a single dimensional mode based multiplexer / de-multiplexer using the slab waveguide to realize high modes multiplexing and high integration in the non-MIMO (multi-in multi-out) multimode transmission system. A sufficient mode crosstalk of -20 dB was obtained by selecting suitable parameters of the spacing between the connecting positions of each arrayed waveguide Di, the radius slab waveguide R0 and lateral V-parameter.

  • Action Recognition Using Pose Data in a Distributed Environment over the Edge and Cloud

    Chikako TAKASAKI  Atsuko TAKEFUSA  Hidemoto NAKADA  Masato OGUCHI  

     
    PAPER

      Pubricized:
    2021/02/02
      Vol:
    E104-D No:5
      Page(s):
    539-550

    With the development of cameras and sensors and the spread of cloud computing, life logs can be easily acquired and stored in general households for the various services that utilize the logs. However, it is difficult to analyze moving images that are acquired by home sensors in real time using machine learning because the data size is too large and the computational complexity is too high. Moreover, collecting and accumulating in the cloud moving images that are captured at home and can be used to identify individuals may invade the privacy of application users. We propose a method of distributed processing over the edge and cloud that addresses the processing latency and the privacy concerns. On the edge (sensor) side, we extract feature vectors of human key points from moving images using OpenPose, which is a pose estimation library. On the cloud side, we recognize actions by machine learning using only the feature vectors. In this study, we compare the action recognition accuracies of multiple machine learning methods. In addition, we measure the analysis processing time at the sensor and the cloud to investigate the feasibility of recognizing actions in real time. Then, we evaluate the proposed system by comparing it with the 3D ResNet model in recognition experiments. The experimental results demonstrate that the action recognition accuracy is the highest when using LSTM and that the introduction of dropout in action recognition using 100 categories alleviates overfitting because the models can learn more generic human actions by increasing the variety of actions. In addition, it is demonstrated that preprocessing using OpenPose on the sensor side can substantially reduce the transfer quantity from the sensor to the cloud.

  • A Throughput Drop Estimation Model for Concurrent Communications under Partially Overlapping Channels without Channel Bonding and Its Application to Channel Assignment in IEEE 802.11n WLAN

    Kwenga ISMAEL MUNENE  Nobuo FUNABIKI  Hendy BRIANTORO  Md. MAHBUBUR RAHMAN  Fatema AKHTER  Minoru KURIBAYASHI  Wen-Chung KAO  

     
    PAPER

      Pubricized:
    2021/02/16
      Vol:
    E104-D No:5
      Page(s):
    585-596

    Currently, the IEEE 802.11n wireless local-area network (WLAN) has been extensively deployed world-wide. For the efficient channel assignment to access-points (APs) from the limited number of partially overlapping channels (POCs) at 2.4GHz band, we have studied the throughput drop estimation model for concurrently communicating links using the channel bonding (CB). However, non-CB links should be used in dense WLANs, since the CB links often reduce the transmission capacity due to high interferences from other links. In this paper, we examine the throughput drop estimation model for concurrently communicating links without using the CB in 802.11n WLAN, and its application to the POC assignment to the APs. First, we verify the model accuracy through experiments in two network fields. The results show that the average error is 9.946% and 6.285% for the high and low interference case respectively. Then, we verify the effectiveness of the POC assignment to the APs using the model through simulations and experiments. The results show that the model improves the smallest throughput of a host by 22.195% and the total throughput of all the hosts by 22.196% on average in simulations for three large topologies, and the total throughput by 12.89% on average in experiments for two small topologies.

2401-2420hit(42807hit)