The search functionality is under construction.
The search functionality is under construction.

Keyword Search Result

[Keyword] ASE(2849hit)

441-460hit(2849hit)

  • On Approximated LLR for Single Carrier Millimeter-Wave Transmissions in the Presence of Phase Noise Open Access

    Makoto NISHIKORI  Shinsuke IBI  Seiichi SAMPEI  

     
    PAPER-Wireless Communication Technologies

      Pubricized:
    2017/01/12
      Vol:
    E100-B No:7
      Page(s):
    1086-1093

    This paper proposes approximated log likelihood ratios (LLRs) for single carrier millimeter-wave (mmW) transmission systems in the presence of phase noise. In mmW systems, phase noise on carrier wave signals in very high frequency bands causes severe performance degradation. In order to mitigate the impairments of phase noise, forward error correction (FEC) techniques, such as low density parity check (LDPC) code, are effective. However, if the probabilistic model does not capture the exact behavior of the random process present in the received signal, FEC performance is severely degraded, especially in higher order modulation or high coding rate cases. To address this issue, we carefully examine the probabilistic model of minimum mean square error (MMSE) equalizer output including phase noise component. Based on the derived probabilistic model, approximated LLR computation methods with low computational burden are proposed. Computer simulations confirm that the approximated LLR computations on the basis of the derived probabilistic model are capable of improving bit error rate (BER) performance without sacrificing computational simplicity in the presence of phase noise.

  • Performance Evaluation of Software-Based Error Detection Mechanisms for Supply Noise Induced Timing Errors

    Yutaka MASUDA  Takao ONOYE  Masanori HASHIMOTO  

     
    PAPER

      Vol:
    E100-A No:7
      Page(s):
    1452-1463

    Software-based error detection techniques, which includes error detection mechanism (EDM) transformation, are used for error localization in post-silicon validation. This paper evaluates the performance of EDM for timing error localization with a noise-aware logic simulator and 65-nm test chips assuming the following two EDM usage scenarios; (1) localizing a timing error occurred in the original program, and (2) localizing as many potential timing errors as possible. Simulation results show that the EDM transformation customized for quick error detection cannot locate electrical timing errors in the original program in the first scenario, but it detects 86% of non-masked errors potential bugs in the second scenario, which mean the EDM performance of detecting electrical timing errors affecting execution results is high. Hardware measurement results show that the EDM detects 25% of original timing errors and 56% of non-masked errors. Here, these hardware measurement results are not consistent with the simulation results. To investigate the reason, we focus on the following two differences between hardware and simulation; (1) design of power distribution network, and (2) definition of timing error occurrence frequency. We update the simulation setup for filling the difference and re-execute the simulation. We confirm that the simulation and the chip measurement results are consistent.

  • Ontology-Based Driving Decision Making: A Feasibility Study at Uncontrolled Intersections

    Lihua ZHAO  Ryutaro ICHISE  Zheng LIU  Seiichi MITA  Yutaka SASAKI  

     
    PAPER-Artificial Intelligence, Data Mining

      Pubricized:
    2017/04/05
      Vol:
    E100-D No:7
      Page(s):
    1425-1439

    This paper presents an ontology-based driving decision making system, which can promptly make safety decisions in real-world driving. Analyzing sensor data for improving autonomous driving safety has become one of the most promising issues in the autonomous vehicles research field. However, representing the sensor data in a machine understandable format for further knowledge processing still remains a challenging problem. In this paper, we introduce ontologies designed for autonomous vehicles and ontology-based knowledge base, which are used for representing knowledge of maps, driving paths, and perceived driving environments. Advanced Driver Assistance Systems (ADAS) are developed to improve safety of autonomous vehicles by accessing to the ontology-based knowledge base. The ontologies can be reused and extended for constructing knowledge base for autonomous vehicles as well as for implementing different types of ADAS such as decision making system.

  • Coverage-Based Clustering and Scheduling Approach for Test Case Prioritization

    Wenhao FU  Huiqun YU  Guisheng FAN  Xiang JI  

     
    PAPER-Software Engineering

      Pubricized:
    2017/03/03
      Vol:
    E100-D No:6
      Page(s):
    1218-1230

    Regression testing is essential for assuring the quality of a software product. Because rerunning all test cases in regression testing may be impractical under limited resources, test case prioritization is a feasible solution to optimize regression testing by reordering test cases for the current testing version. In this paper, we propose a novel test case prioritization approach that combines the clustering algorithm and the scheduling algorithm for improving the effectiveness of regression testing. By using the clustering algorithm, test cases with same or similar properties are merged into a cluster, and the scheduling algorithm helps allocate an execution priority for each test case by incorporating fault detection rates with the waiting time of test cases in candidate set. We have conducted several experiments on 12 C programs to validate the effectiveness of our proposed approach. Experimental results show that our approach is more effective than some well studied test case prioritization techniques in terms of average percentage of fault detected (APFD) values.

  • A Method for Correcting Preposition Errors in Learner English with Feedback Messages

    Ryo NAGATA  Edward WHITTAKER  

     
    PAPER-Educational Technology

      Pubricized:
    2017/03/08
      Vol:
    E100-D No:6
      Page(s):
    1280-1289

    This paper presents a novel framework called error case frames for correcting preposition errors. They are case frames specially designed for describing and correcting preposition errors. Their most distinct advantage is that they can correct errors with feedback messages explaining why the preposition is erroneous. This paper proposes a method for automatically generating them by comparing learner and native corpora. Experiments show (i) automatically generated error case frames achieve a performance comparable to previous methods; (ii) error case frames are intuitively interpretable and manually modifiable to improve them; (iii) feedback messages provided by error case frames are effective in language learning assistance. Considering these advantages and the fact that it has been difficult to provide feedback messages using automatically generated rules, error case frames will likely be one of the major approaches for preposition error correction.

  • A 20-GHz Differential Push-Push VCO for 60-GHz Frequency Synthesizer toward 256 QAM Wireless Transmission in 65-nm CMOS Open Access

    Yun WANG  Makihiko KATSURAGI  Kenichi OKADA  Akira MATSUZAWA  

     
    PAPER

      Vol:
    E100-C No:6
      Page(s):
    568-575

    This paper present a 20-GHz differential push-push voltage controlled oscillator (VCO) for 60-GHz frequency synthesizer. The 20-GHz VCO consists of a 10-GHz in-phase injection-coupled QVCO (IPIC-QVCO) with tail-filter and a differential output push-push doubler for 20-GHz output. The VCO fabricated in 65-nm CMOS technology, it achieves tuning range of 3 GHz from 17.5 GHz to 20.4 GHz with a phase noise of -113.8 dBc/Hz at 1 MHz offset. The core oscillator consumes up to 71 mW power and a FoM of -180.2 dBc/Hz is achieved.

  • An Attention-Based Hybrid Neural Network for Document Modeling

    Dengchao HE  Hongjun ZHANG  Wenning HAO  Rui ZHANG  Huan HAO  

     
    LETTER-Artificial Intelligence, Data Mining

      Pubricized:
    2017/03/21
      Vol:
    E100-D No:6
      Page(s):
    1372-1375

    The purpose of document modeling is to learn low-dimensional semantic representations of text accurately for Natural Language Processing tasks. In this paper, proposed is a novel attention-based hybrid neural network model, which would extract semantic features of text hierarchically. Concretely, our model adopts a bidirectional LSTM module with word-level attention to extract semantic information for each sentence in text and subsequently learns high level features via a dynamic convolution neural network module. Experimental results demonstrate that our proposed approach is effective and achieve better performance than conventional methods.

  • Statistical Analysis of Phase-Only Correlation Functions between Real Signals with Stochastic Phase-Spectrum Differences

    Shunsuke YAMAKI  Masahide ABE  Masayuki KAWAMATA  

     
    PAPER-Digital Signal Processing

      Vol:
    E100-A No:5
      Page(s):
    1097-1108

    This paper proposes the statistical analysis of phase-only correlation functions between two real signals with phase-spectrum differences. For real signals, their phase-spectrum differences have odd-symmetry with respect to frequency indices. We assume phase-spectrum differences between two signals to be random variables. We next derive the expectation and variance of the POC functions considering the odd-symmetry of the phase-spectrum differences. As a result, the expectation and variance of the POC functions can be expressed by characteristic functions or trigonometric moments of the phase-spectrum differences. Furthermore, it is shown that the peak value of the POC function monotonically decreases and the sidelobe values monotonically increase as the variance of the phase-spectrum differences increases.

  • Fuzzy Biometric-Based Encryption for Encrypted Data in the Cloud

    Qing WU  Leyou ZHANG  Jingxia ZHANG  

     
    LETTER-Cryptography and Information Security

      Vol:
    E100-A No:5
      Page(s):
    1257-1261

    Fuzzy techniques can implement the fine-grained access control of encrypted data in the Cloud because they support error-tolerance. In this system, using biometric attributes such as fingerprints, faces and irises as pubic parameters is advantageous over those systems based on Public Key Infrastructure (PKI). This is because biometric information is unique, unforgettable and non-transferable. However the biometric-attribute measurements are noisy and most of the existing encryption systems can not support the biometric-attribute encryption. Additionally, the previous fuzzy encryption schemes only achieve the selective security which is a weak security model. To overcome these drawbacks, we propose a new fuzzy encryption scheme based on the lattice in this letter. The proposed scheme is based on a hierarchical identity-based encryption with fixed-dimensional private keys space and thus has short public parameters and short private keys, which results in high computation efficiency. Furthermore, it achieves the strong security, i.e., adaptive security. Lastly, the security is reduced to the learning with errors (LWE) problem in the standard model.

  • RRWL: Round Robin-Based Wear Leveling Using Block Erase Table for Flash Memory

    Seon Hwan KIM  Ju Hee CHOI  Jong Wook KWAK  

     
    LETTER-Software System

      Pubricized:
    2017/01/30
      Vol:
    E100-D No:5
      Page(s):
    1124-1127

    In this letter, we propose a round robin-based wear leveling (RRWL) for flash memory systems. RRWL uses a block erase table (BET), which is composed of a bit array and saves the erasure histories of blocks. BET can use one-to-one mode to increase the performance of wear leveling or one-to-many mode to reduce memory consumption. However, one-to-many mode decreases the accuracy of cold block information, which results in the lifetime degradation of flash memory. To solve this problem, RRWL consistently uses one-to-one mode based on round robin method to increase the accuracy of cold block identification, with reduced memory size of BET, like in one-to-many mode. Experiments show that RRWL increases the lifetime of flash memory by up to 47% and 14%, compared with BET and HaWL, respectively.

  • l-Close Range Friends Query on Social Grid Index

    Changbeom SHIM  Wooil KIM  Wan HEO  Sungmin YI  Yon Dohn CHUNG  

     
    LETTER

      Pubricized:
    2017/01/17
      Vol:
    E100-D No:4
      Page(s):
    811-812

    The development of smart devices has led to the growth of Location-Based Social Networking Services (LBSNSs). In this paper, we introduce an l-Close Range Friends query that finds all l-hop friends of a user within a specified range. We also propose a query processing method on Social Grid Index (SGI). Using real datasets, the performance of our method is evaluated.

  • An Iteration Based Beamforming Method for Planar Phased Array in Millimeter-Wave Communication

    Junlin TANG  Guangrong YUE  Lei CHEN  Shaoqian LI  

     
    PAPER-Electromagnetic Theory

      Vol:
    E100-C No:4
      Page(s):
    399-406

    Nowadays, with the extensive use of smart devices, the amount of mobile data is experiencing an exponential growth. As a result, accommodating the large amount of traffic is important for the future 5G mobile communication. Millimeter-wave band, which has a lot of spectrum resources to meet the demand brought by the growth of mobile data, is becoming an important part of 5G technology. In order to mitigate the high path loss brought by the high frequency band, beamforming is often used to enhance the gain of a link. In this paper, we propose an iteration-based beamforming method for planar phased array. When compared to a linear array, a planar phased array points a smaller area which ensures a better link performance. We deduce that different paths of millimeter-wave channel are approximately orthogonal when the antenna array is large, which forms the basis of our iterative approach. We also discuss the development of the important millimeter-wave device-phase shifter, and its effect on the performance of the proposed beamforming method. From the simulation, we prove that our method has a performance close to the singular vector decomposition (SVD) method and is superior to the method in IEEE802.15.3c. Moreover, the channel capacity of the proposed method is at most 0.41bps/Hz less than the SVD method. We also show that the convergence of the proposed method could be achieved within 4 iterations and a 3-bit phase shifter is enough for practical implementation.

  • Data Detection for OFDM Systems with Phase Noise and Channel Estimation Errors Using Variational Inference

    Feng LI  Shuyuan LI  Hailin LI  

     
    PAPER-Communication Theory and Signals

      Vol:
    E100-A No:4
      Page(s):
    1037-1044

    This paper studies a novel iterative detection algorithm for data detection in orthogonal frequency division multiplexing systems in the presence of phase noise (PHN) and channel estimation errors. By simplifying the maximum a posteriori algorithm based on the theory of variational inference, an optimization problem over variational free energy is formulated. After that, the estimation of data, PHN and channel state information is obtained jointly and iteratively. The simulations indicate the validity of this algorithm and show a better performance compared with the traditional schemes.

  • A 1.9GHz Low-Phase-Noise Complementary Cross-Coupled FBAR-VCO without Additional Voltage Headroom in 0.18µm CMOS Technology

    Guoqiang ZHANG  Awinash ANAND  Kousuke HIKICHI  Shuji TANAKA  Masayoshi ESASHI  Ken-ya HASHIMOTO  Shinji TANIGUCHI  Ramesh K. POKHAREL  

     
    PAPER

      Vol:
    E100-C No:4
      Page(s):
    363-369

    A 1.9GHz film bulk acoustic resonator (FBAR)-based low-phase-noise complementary cross-coupled voltage-controlled oscillator (VCO) is presented. The FBAR-VCO is designed and fabricated in 0.18µm CMOS process. The DC latch and the low frequency instability are resolved by employing the NMOS source coupling capacitor and the DC blocked cross-coupled pairs. Since no additional voltage headroom is required, the proposed FBAR-VCO can be operated at a low power supply voltage of 1.1V with a wide voltage swing of 0.9V. An effective phase noise optimization is realized by a reasonable trade-off between the output resistance and the trans-conductance of the cross-coupled pairs. The measured performance shows the proposed FBAR-VCO achieves a phase noise of -148dBc/Hz at 1MHz offset with a figure of merit (FoM) of -211.6dB.

  • An Effective and Simple Solution for Stationary Target Localization Using Doppler Frequency Shift Measurements

    Li Juan DENG  Ping WEI  Yan Shen DU  Wan Chun LI  Ying Xiang LI  Hong Shu LIAO  

     
    LETTER-Digital Signal Processing

      Vol:
    E100-A No:4
      Page(s):
    1070-1073

    Target determination based on Doppler frequency shift (DFS) measurements is a nontrivial problem because of the nonlinear relation between the position space and the measurements. The conventional methods such as numerical iterative algorithm and grid searching are used to obtain the solution, while the former requires an initial position estimate and the latter needs huge amount of calculations. In this letter, to avoid the problems appearing in those conventional methods, an effective solution is proposed, in which two best linear unbiased estimators (BULEs) are employed to obtain an explicit solution of the proximate target position. Subsequently, this obtained explicit solution is used to initialize the problem of original maximum likelihood estimation (MLE), which can provide a more accurate estimate.

  • An (N+N2)-Mixer Architecture for a High-Image-Rejection Wireless Receiver with an N-Phase Active Complex Filter

    Mamoru UGAJIN  Takuya SHINDO  Tsuneo TSUKAHARA  Takefumi HIRAGURI  

     
    PAPER-Circuit Theory

      Vol:
    E100-A No:4
      Page(s):
    1008-1014

    A high-image-rejection wireless receiver with an N-phase active RC complex filter is proposed and analyzed. Signal analysis shows that the double-conversion receiver with (N+N2) mixers corrects the gain and phase mismatches of the adjacent image. Monte Carlo simulations evaluate the relation between image-rejection performances and the dispersions of device parameters for the double-conversion wireless receiver. The Monte Carlo simulations show that the image rejection ratio of the adjacent image depends almost only on R and C mismatches in the complex filter.

  • Accent Sandhi Estimation of Tokyo Dialect of Japanese Using Conditional Random Fields Open Access

    Masayuki SUZUKI  Ryo KUROIWA  Keisuke INNAMI  Shumpei KOBAYASHI  Shinya SHIMIZU  Nobuaki MINEMATSU  Keikichi HIROSE  

     
    INVITED PAPER

      Pubricized:
    2016/12/08
      Vol:
    E100-D No:4
      Page(s):
    655-661

    When synthesizing speech from Japanese text, correct assignment of accent nuclei for input text with arbitrary contents is indispensable in obtaining naturally-sounding synthetic speech. A phenomenon called accent sandhi occurs in utterances of Japanese; when a word is uttered in a sentence, its accent nucleus may change depending on the contexts of preceding/succeeding words. This paper describes a statistical method for automatically predicting the accent nucleus changes due to accent sandhi. First, as the basis of the research, a database of Japanese text was constructed with labels of accent phrase boundaries and accent nucleus positions when uttered in sentences. A single native speaker of Tokyo dialect Japanese annotated all the labels for 6,344 Japanese sentences. Then, using this database, a conditional-random-field-based method was developed using this database to predict accent phrase boundaries and accent nuclei. The proposed method predicted accent nucleus positions for accent phrases with 94.66% accuracy, clearly surpassing the 87.48% accuracy obtained using our rule-based method. A listening experiment was also conducted on synthetic speech obtained using the proposed method and that obtained using the rule-based method. The results show that our method significantly improved the naturalness of synthetic speech.

  • Interdisciplinary Collaborator Recommendation Based on Research Content Similarity

    Masataka ARAKI  Marie KATSURAI  Ikki OHMUKAI  Hideaki TAKEDA  

     
    PAPER

      Pubricized:
    2016/10/13
      Vol:
    E100-D No:4
      Page(s):
    785-792

    Most existing methods on research collaborator recommendation focus on promoting collaboration within a specific discipline and exploit a network structure derived from co-authorship or co-citation information. To find collaboration opportunities outside researchers' own fields of expertise and beyond their social network, we present an interdisciplinary collaborator recommendation method based on research content similarity. In the proposed method, we calculate textual features that reflect a researcher's interests using a research grant database. To find the most relevant researchers who work in other fields, we compare constructing a pairwise similarity matrix in a feature space and exploiting existing social networks with content-based similarity. We present a case study at the Graduate University for Advanced Studies in Japan in which actual collaborations across departments are used as ground truth. The results indicate that our content-based approach can accurately predict interdisciplinary collaboration compared with the conventional collaboration network-based approaches.

  • SpEnD: Linked Data SPARQL Endpoints Discovery Using Search Engines

    Semih YUMUSAK  Erdogan DOGDU  Halife KODAZ  Andreas KAMILARIS  Pierre-Yves VANDENBUSSCHE  

     
    PAPER

      Pubricized:
    2017/01/17
      Vol:
    E100-D No:4
      Page(s):
    758-767

    Linked data endpoints are online query gateways to semantically annotated linked data sources. In order to query these data sources, SPARQL query language is used as a standard. Although a linked data endpoint (i.e. SPARQL endpoint) is a basic Web service, it provides a platform for federated online querying and data linking methods. For linked data consumers, SPARQL endpoint availability and discovery are crucial for live querying and semantic information retrieval. Current studies show that availability of linked datasets is very low, while the locations of linked data endpoints change frequently. There are linked data respsitories that collect and list the available linked data endpoints or resources. It is observed that around half of the endpoints listed in existing repositories are not accessible (temporarily or permanently offline). These endpoint URLs are shared through repository websites, such as Datahub.io, however, they are weakly maintained and revised only by their publishers. In this study, a novel metacrawling method is proposed for discovering and monitoring linked data sources on the Web. We implemented the method in a prototype system, named SPARQL Endpoints Discovery (SpEnD). SpEnD starts with a “search keyword” discovery process for finding relevant keywords for the linked data domain and specifically SPARQL endpoints. Then, the collected search keywords are utilized to find linked data sources via popular search engines (Google, Bing, Yahoo, Yandex). By using this method, most of the currently listed SPARQL endpoints in existing endpoint repositories, as well as a significant number of new SPARQL endpoints, have been discovered. We analyze our findings in comparison to Datahub collection in detail.

  • A Novel Class of Quadriphase Zero-Correlation Zone Sequence Sets

    Takafumi HAYASHI  Yodai WATANABE  Toshiaki MIYAZAKI  Anh PHAM  Takao MAEDA  Shinya MATSUFUJI  

     
    LETTER-Sequences

      Vol:
    E100-A No:4
      Page(s):
    953-960

    The present paper introduces the construction of quadriphase sequences having a zero-correlation zone. For a zero-correlation zone sequence set of N sequences, each of length l, the cross-correlation function and the side lobe of the autocorrelation function of the proposed sequence set are zero for the phase shifts τ within the zero-correlation zone z, such that |τ|≤z (τ ≠ 0 for the autocorrelation function). The ratio $ rac{N(z+1)}{ell}$ is theoretically limited to one. When l=N(z+1), the sequence set is called an optimal zero-correlation sequence set. The proposed zero-correlation zone sequence set can be generated from an arbitrary Hadamard matrix of order n. The length of the proposed sequence set can be extended by sequence interleaving, where m times interleaving can generate 4n sequences, each of length 2m+3n. The proposed sequence set is optimal for m=0,1 and almost optimal for m>1.

441-460hit(2849hit)