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[Author] Ning AN(51hit)

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  • SEM Image Quality Assessment Based on Texture Inpainting

    Zhaolin LU  Ziyan ZHANG  Yi WANG  Liang DONG  Song LIANG  

     
    LETTER-Image Processing and Video Processing

      Pubricized:
    2020/10/30
      Vol:
    E104-D No:2
      Page(s):
    341-345

    This letter presents an image quality assessment (IQA) metric for scanning electron microscopy (SEM) images based on texture inpainting. Inspired by the observation that the texture information of SEM images is quite sensitive to distortions, a texture inpainting network is first trained to extract texture features. Then the weights of the trained texture inpainting network are transferred to the IQA network to help it learn an effective texture representation of the distorted image. Finally, supervised fine-tuning is conducted on the IQA network to predict the image quality score. Experimental results on the SEM image quality dataset demonstrate the advantages of the presented method.

  • Image Pattern Similarity Index and Its Application to Task-Specific Transfer Learning

    Jun WANG  Guoqing WANG  Leida LI  

     
    LETTER-Artificial Intelligence, Data Mining

      Pubricized:
    2017/08/31
      Vol:
    E100-D No:12
      Page(s):
    3032-3035

    A quantized index for evaluating the pattern similarity of two different datasets is designed by calculating the number of correlated dictionary atoms. Guided by this theory, task-specific biometric recognition model transferred from state-of-the-art DNN models is realized for both face and vein recognition.

  • Adaptive Multi-Scale Tracking Target Algorithm through Drone

    Qiusheng HE  Xiuyan SHAO  Wei CHEN  Xiaoyun LI  Xiao YANG  Tongfeng SUN  

     
    PAPER

      Pubricized:
    2019/04/26
      Vol:
    E102-B No:10
      Page(s):
    1998-2005

    In order to solve the influence of scale change on target tracking using the drone, a multi-scale target tracking algorithm is proposed which based on the color feature tracking algorithm. The algorithm realized adaptive scale tracking by training position and scale correlation filters. It can first obtain the target center position of next frame by computing the maximum of the response, where the position correlation filter is learned by the least squares classifier and the dimensionality reduction for color features is analyzed by principal component analysis. The scale correlation filter is obtained by color characteristics at 33 rectangular areas which is set by the scale factor around the central location and is reduced dimensions by orthogonal triangle decomposition. Finally, the location and size of the target are updated by the maximum of the response. By testing 13 challenging video sequences taken by the drone, the results show that the algorithm has adaptability to the changes in the target scale and its robustness along with many other performance indicators are both better than the most state-of-the-art methods in illumination Variation, fast motion, motion blur and other complex situations.

  • Improving Face Image Representation Using Tangent Vectors and the L1 Norm

    Zhicheng LU  Zhizheng LIANG  Lei ZHANG  Jin LIU  Yong ZHOU  

     
    LETTER-Image

      Vol:
    E99-A No:11
      Page(s):
    2099-2103

    Inspired from the idea of data representation in manifold learning, we derive a novel model which combines the original training images and their tangent vectors to represent each image in the testing set. Different from the previous methods, the L1 norm is used to control the reconstruction error. Considering the fact that the objective function in the proposed model is non-smooth, we utilize the majorization minimization (MM) method to solve the proposed optimization model. It is interesting to note that at each iteration a quadratic optimization problem is formulated and its analytical solution can be achieved, thereby making the proposed algorithm effective. Extensive experiments on face images demonstrate that our method achieves better performance than some previous methods.

  • A Simple Deterministic Measurement Matrix Based on GMW Pseudorandom Sequence

    Haiqiang LIU  Gang HUA  Hongsheng YIN  Aichun ZHU  Ran CUI  

     
    PAPER-Information Network

      Pubricized:
    2019/04/16
      Vol:
    E102-D No:7
      Page(s):
    1296-1301

    Compressed sensing is an effective compression algorithm. It is widely used to measure signals in distributed sensor networks (DSNs). Considering the limited resources of DSNs, the measurement matrices used in DSNs must be simple. In this paper, we construct a deterministic measurement matrix based on Gordon-Mills-Welch (GMW) sequence. The column vectors of the proposed measurement matrix are generated by cyclically shifting a GMW sequence. Compared with some state-of-the-art measurement matrices, the proposed measurement matrix has relative lower computational complexity and needs less storage space. It is suitable for resource-constrained DSNs. Moreover, because the proposed measurement matrix can be realized by using simple shift register, it is more practical. The simulation result shows that, in terms of recovery quality, the proposed measurement matrix performs better than some state-of-the-art measurement matrices.

  • Hybrid Markov Location Prediction Algorithm Based on Dynamic Social Ties

    Wen LI  Shi-xiong XIA  Feng LIU  Lei ZHANG  

     
    PAPER-Information Network

      Pubricized:
    2015/05/14
      Vol:
    E98-D No:8
      Page(s):
    1456-1464

    Much research which has shown the usage of social ties could improve the location predictive performance, but as the strength of social ties is varying constantly with time, using the movement data of user's close friends at different times could obtain a better predictive performance. A hybrid Markov location prediction algorithm based on dynamic social ties is presented. The time is divided by the absolute time (week) to mine the long-term changing trend of users' social ties, and then the movements of each week are projected to the workdays and weekends to find the changes of the social circle in different time slices. The segmented friends' movements are compared to the history of the user with our modified cross-sample entropy to discover the individuals who have the relatively high similarity with the user in different time intervals. Finally, the user's historical movement data and his friends' movements at different times which are assigned with the similarity weights are combined to build the hybrid Markov model. The experiments based on a real location-based social network dataset show the hybrid Markov location prediction algorithm could improve 15% predictive accuracy compared with the location prediction algorithms that consider the global strength of social ties.

  • Reliability Analysis of Power and Communication Network in Drone Monitoring System

    Fengying MA  Yankai YIN  Wei CHEN  

     
    PAPER

      Pubricized:
    2019/05/02
      Vol:
    E102-B No:10
      Page(s):
    1991-1997

    The distinctive characteristics of unmanned aerial vehicle networks (UAVNs), including highly dynamic network topology, high mobility, and open-air wireless environments, may make UAVNs vulnerable to attacks and threats. Due to the special security requirements, researching in the high reliability of the power and communication network in drone monitoring system become special important. The reliability of the communication network and power in the drone monitoring system has been studied. In order to assess the reliability of the system power supply in the drone emergency monitoring system, the accelerated life tests under constant stress were presented based on the exponential distribution. Through a comparative analysis of lots of factors, the temperature was chosen as the constant accelerated stress parameter. With regard to the data statistical analysis, the type-I censoring sample method was put forward. The mathematical model of the drone monitoring power supply was established and the average life expectancy curve was obtained under different temperatures through the analysis of experimental data. The results demonstrated that the mathematical model and the average life expectancy curve were fit for the actual very well. With overall consideration of the communication network topology structure and network capacity the improved EED-SDP method was put forward in drone monitoring. It is concluded that reliability analysis of power and communication network in drone monitoring system is remarkably important to improve the reliability of drone monitoring system.

  • Detecting Transportation Modes Using Deep Neural Network

    Hao WANG  GaoJun LIU  Jianyong DUAN  Lei ZHANG  

     
    LETTER-Artificial Intelligence, Data Mining

      Pubricized:
    2017/02/15
      Vol:
    E100-D No:5
      Page(s):
    1132-1135

    Existing studies on transportation mode detection from global positioning system (GPS) trajectories mainly adopt handcrafted features. These features require researchers with a professional background and do not always work well because of the complexity of traffic behavior. To address these issues, we propose a model using a sparse autoencoder to extract point-level deep features from point-level handcrafted features. A convolution neural network then aggregates the point-level deep features and generates a trajectory-level deep feature. A deep neural network incorporates the trajectory-level handcrafted features and the trajectory-level deep feature for detecting the users' transportation modes. Experiments conducted on Microsoft's GeoLife data show that our model can automatically extract the effective features and improve the accuracy of transportation mode detection. Compared with the model using only handcrafted features and shallow classifiers, the proposed model increases the maximum accuracy by 6%.

  • Bimodal Vein Recognition Based on Task-Specific Transfer Learning

    Guoqing WANG  Jun WANG  Zaiyu PAN  

     
    LETTER-Artificial Intelligence, Data Mining

      Pubricized:
    2017/04/17
      Vol:
    E100-D No:7
      Page(s):
    1538-1541

    Both gender and identity recognition task with hand vein information is solved based on the proposed cross-selected-domain transfer learning model. State-of-the-art recognition results demonstrate the effectiveness of the proposed model for pattern recognition task, and the capability to avoid over-fitting of fine-tuning DCNN with small-scaled database.

  • Trajectory Outlier Detection Based on Multi-Factors

    Lei ZHANG  Zimu HU  Guang YANG  

     
    LETTER-Data Engineering, Web Information Systems

      Vol:
    E97-D No:8
      Page(s):
    2170-2173

    Most existing outlier detection algorithms only utilized location of trajectory points and neglected some important factors such as speed, acceleration, and corner. To address this problem, we present a Trajectory Outlier Detection algorithm based on Multi-Factors (TODMF). TODMF is improved in terms of distance-based outlier detection algorithms. It combines multi-factors into outlier detection to find more meaningful trajectory outliers. We resort to Canonical Correlation Analysis (CCA) to optimize the number of factors when determining what factors will be considered. Finally, the experiments with real trajectory data sets show that TODMF performs efficiently and effectively when applied to the problem of trajectory outlier detection.

  • A Novel Unambiguous Acquisition Algorithm Based on Segmentation Reconstruction for BOC(n,n) Signal Open Access

    Yuanfa JI  Sisi SONG  Xiyan SUN  Ning GUO  Youming LI  

     
    PAPER-Navigation, Guidance and Control Systems

      Pubricized:
    2022/08/26
      Vol:
    E106-B No:3
      Page(s):
    287-295

    In order to improve the frequency band utilization and avoid mutual interference between signals, the BD3 satellite signals adopt Binary Offset Carrier (BOC) modulation. On one hand, BOC modulation has a narrow main peak width and strong anti-interference ability; on the other hand, the phenomenon of false acquisition locking caused by the multi-peak characteristic of BOC modulation itself needs to be resolved. In this context, this paper proposes a new BOC(n,n) unambiguous acquisition algorithm based on segmentation reconstruction. The algorithm is based on splitting the local BOC signal into four parts in each subcarrier period. The branch signal and the received signal are correlated with the received signal to generate four branch correlation signals. After a series of combined reconstructions, the final signal detection function completely eliminates secondary peaks. A simulation shows that the algorithm can completely eliminate the sub-peak interference for the BOC signals modulated by subcarriers with different phase. The characteristics of narrow correlation peak are retained. Experiments show that the proposed algorithm has superior performance in detection probability and peak-to-average ratio.

41-51hit(51hit)