The search functionality is under construction.

Author Search Result

[Author] Fei ZHOU(11hit)

1-11hit
  • Roughness Classification with Aggregated Discrete Fourier Transform

    Chao LIANG  Wenming YANG  Fei ZHOU  Qingmin LIAO  

     
    PAPER-Image Recognition, Computer Vision

      Vol:
    E97-D No:10
      Page(s):
    2769-2779

    In this paper, we propose a texture descriptor based on amplitude distribution and phase distribution of the discrete Fourier transform (DFT) of an image. One dimensional DFT is applied to all the rows and columns of an image. Histograms of the amplitudes and gradients of the phases between adjacent rows/columns are computed as the feature descriptor, which is called aggregated DFT (ADFT). ADFT can be easily combined with completed local binary pattern (CLBP). The combined feature captures both global and local information of the texture. ADFT is designed for isotropic textures and demonstrated to be effective for roughness classification of castings. Experimental results show that the amplitude part of ADFT is also discriminative in describing anisotropic textures and it can be used as a complementary descriptor of local texture descriptors such as CLBP.

  • RBM-LBP: Joint Distribution of Multiple Local Binary Patterns for Texture Classification

    Chao LIANG  Wenming YANG  Fei ZHOU  Qingmin LIAO  

     
    LETTER-Pattern Recognition

      Pubricized:
    2016/08/19
      Vol:
    E99-D No:11
      Page(s):
    2828-2831

    In this letter, we propose a novel framework to estimate the joint distribution of multiple Local Binary Patterns (LBPs). Multiple LBPs extracted from the same central pixel are first encoded using handcrafted encoding schemes to achieve rotation invariance, and the outputs are further encoded through a pre-trained Restricted Boltzmann Machine (RBM) to reduce the dimension of features. RBM has been successfully used as binary feature detectors and the binary-valued units of RBM seamlessly adapt to LBP. The proposed feature is called RBM-LBP. Experiments on the CUReT and Outex databases show that RBM-LBP is superior to conventional handcrafted encodings and more powerful in estimating the joint distribution of multiple LBPs.

  • Reflection and Rotation Invariant Uniform Patterns for Texture Classification

    Chao LIANG  Wenming YANG  Fei ZHOU  Qingmin LIAO  

     
    LETTER-Image Recognition, Computer Vision

      Pubricized:
    2016/02/05
      Vol:
    E99-D No:5
      Page(s):
    1400-1403

    In this letter, we propose a novel texture descriptor that takes advantage of an anisotropic neighborhood. A brand new encoding scheme called Reflection and Rotation Invariant Uniform Patterns (rriu2) is proposed to explore local structures of textures. The proposed descriptor is called Oriented Local Binary Patterns (OLBP). OLBP may be incorporated into other varieties of Local Binary Patterns (LBP) to obtain more powerful texture descriptors. Experimental results on CUReT and Outex databases show that OLBP not only significantly outperforms LBP, but also demonstrates great robustness to rotation and illuminant changes.

  • High Frequency Resolution DCO with Mismatched Capacitor Pairs

    Depeng JIN  Guofei ZHOU  Yong LI  Shijun LIN  Li SU  Lieguang ZENG  

     
    LETTER-Electronic Circuits

      Vol:
    E93-C No:2
      Page(s):
    208-210

    The LC-based Digitally Controlled Oscillator (DCO) is one of the most important components of all digital phase locked loops. The performance of the loops is significantly determined by the DCO's frequency resolution. In order to enhance the frequency resolution, we propose a mismatched capacitor pairs based digitally controlled switched capacitance array, which dramatically reduces the minimum switched varactor capacitance. Furthermore, we implement a DCO based on our proposal in SMIC 0.18 µm and conduct simulation in Spectre. The simulation results show that the frequency resolution is enhanced compared with the existing methods.

  • Feature-Level Fusion of Finger Veins and Finger Dorsal Texture for Personal Authentication Based on Orientation Selection

    Wenming YANG  Guoli MA  Fei ZHOU  Qingmin LIAO  

     
    LETTER-Pattern Recognition

      Vol:
    E97-D No:5
      Page(s):
    1371-1373

    This study proposes a feature-level fusion method that uses finger veins (FVs) and finger dorsal texture (FDT) for personal authentication based on orientation selection (OS). The orientation codes obtained by the filters correspond to different parts of an image (foreground or background) and thus different orientations offer different levels of discrimination performance. We have conducted an orientation component analysis on both FVs and FDT. Based on the analysis, an OS scheme is devised which combines the discriminative orientation features of both modalities. Our experiments demonstrate the effectiveness of the proposed method.

  • Robust Hybrid Finger Pattern Identification Using Intersection Enhanced Gabor Based Direction Coding

    Wenming YANG  Wenyang JI  Fei ZHOU  Qingmin LIAO  

     
    LETTER-Image Recognition, Computer Vision

      Pubricized:
    2016/07/06
      Vol:
    E99-D No:10
      Page(s):
    2668-2671

    Automated biometrics identification using finger vein images has increasingly generated interest among researchers with emerging applications in human biometrics. The traditional feature-level fusion strategy is limited and expensive. To solve the problem, this paper investigates the possible use of infrared hybrid finger patterns on the back side of a finger, which includes both the information of finger vein and finger dorsal textures in original image, and a database using the proposed hybrid pattern is established. Accordingly, an Intersection enhanced Gabor based Direction Coding (IGDC) method is proposed. The Experiment achieves a recognition ratio of 98.4127% and an equal error rate of 0.00819 on our newly established database, which is fairly competitive.

  • Learning Pixel Perception for Identity and Illumination Consistency Face Frontalization in the Wild

    Yongtang BAO  Pengfei ZHOU  Yue QI  Zhihui WANG  Qing FAN  

     
    PAPER-Person Image Generation

      Pubricized:
    2022/06/21
      Vol:
    E106-D No:5
      Page(s):
    794-803

    A frontal and realistic face image was synthesized from a single profile face image. It has a wide range of applications in face recognition. Although the frontal face method based on deep learning has made substantial progress in recent years, there is still no guarantee that the generated face has identity consistency and illumination consistency in a significant posture. This paper proposes a novel pixel-based feature regression generative adversarial network (PFR-GAN), which can learn to recover local high-frequency details and preserve identity and illumination frontal face images in an uncontrolled environment. We first propose a Reslu block to obtain richer feature representation and improve the convergence speed of training. We then introduce a feature conversion module to reduce the artifacts caused by face rotation discrepancy, enhance image generation quality, and preserve more high-frequency details of the profile image. We also construct a 30,000 face pose dataset to learn about various uncontrolled field environments. Our dataset includes ages of different races and wild backgrounds, allowing us to handle other datasets and obtain better results. Finally, we introduce a discriminator used for recovering the facial structure of the frontal face images. Quantitative and qualitative experimental results show our PFR-GAN can generate high-quality and high-fidelity frontal face images, and our results are better than the state-of-art results.

  • Parameterized Multisurface Fitting for Multi-Frame Superresolution

    Hongliang XU  Fei ZHOU  Fan YANG  Qingmin LIAO  

     
    LETTER-Image Processing and Video Processing

      Vol:
    E97-D No:4
      Page(s):
    1001-1003

    We propose a parameterized multisurface fitting method for multi-frame super-resolution (SR) processing. A parameter assumed for the unknown high-resolution (HR) pixel is used for multisurface fitting. Each surface fitted at each low-resolution (LR) pixel is an expression of the parameter. Final SR result is obtained by fusing the sampling values from these surfaces in the maximum a posteriori fashion. Experimental results demonstrate the superiority of the proposed method.

  • Image Quality Assessment Based on Multi-Order Visual Comparison

    Fei ZHOU  Wen SUN  Qingmin LIAO  

     
    LETTER-Image Processing and Video Processing

      Vol:
    E97-D No:5
      Page(s):
    1379-1381

    A new scheme based on multi-order visual comparison is proposed for full-reference image quality assessment. Inspired by the observation that various image derivatives have great but different effects on visual perception, we perform respective comparison on different orders of image derivatives. To obtain an overall image quality score, we adaptively integrate the results of different comparisons via a perception-inspired strategy. Experimental results on public databases demonstrate that the proposed method is more competitive than some state-of-the-art methods, benchmarked against subjective assessment given by human beings.

  • Face Hallucination by Learning Local Distance Metric

    Yuanpeng ZOU  Fei ZHOU  Qingmin LIAO  

     
    LETTER-Image Processing and Video Processing

      Pubricized:
    2016/11/07
      Vol:
    E100-D No:2
      Page(s):
    384-387

    In this letter, we propose a novel method for face hallucination by learning a new distance metric in the low-resolution (LR) patch space (source space). Local patch-based face hallucination methods usually assume that the two manifolds formed by LR and high-resolution (HR) image patches have similar local geometry. However, this assumption does not hold well in practice. Motivated by metric learning in machine learning, we propose to learn a new distance metric in the source space, under the supervision of the true local geometry in the target space (HR patch space). The learned new metric gives more freedom to the presentation of local geometry in the source space, and thus the local geometries of source and target space turn to be more consistent. Experiments conducted on two datasets demonstrate that the proposed method is superior to the state-of-the-art face hallucination and image super-resolution (SR) methods.

  • Optical Flow Estimation Combining Spatial-Temporal Derivatives Based Nonlinear Filtering

    Kaihong SHI  Zongqing LU  Qingyun SHE  Fei ZHOU  Qingmin LIAO  

     
    LETTER-Image Recognition, Computer Vision

      Vol:
    E97-D No:9
      Page(s):
    2559-2562

    This paper presents a novel filter to keep from over-smoothing the edges and corners and rectify the outliers in the flow field after each incremental computation step, which plays a key role during the process of estimating flow field. This filter works according to the spatial-temporal derivatives distance of the input image and velocity field distance, whose principle is more reasonable in filtering mechanism for optical flow than other existing nonlinear filters. Moreover, we regard the spatial-temporal derivatives as new powerful descriptions of different motion layers or regions and give a detailed explanation. Experimental results show that our proposed method achieves better performance.