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[Author] Xiamu NIU(13hit)

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  • Skeleton Modulated Topological Perception Map for Rapid Viewpoint Selection

    Zhenfeng SHI  Liyang YU  Ahmed A. ABD EL-LATIF  Xiamu NIU  

     
    LETTER-Computer Graphics

      Vol:
    E95-D No:10
      Page(s):
    2585-2588

    Incorporating insights from human visual perception into 3D object processing has become an important research field in computer graphics during the past decades. Many computational models for different applications have been proposed, such as mesh saliency, mesh roughness and mesh skeleton. In this letter, we present a novel Skeleton Modulated Topological Visual Perception Map (SMTPM) integrated with visual attention and visual masking mechanism. A new skeletonisation map is presented and used to modulate the weight of saliency and roughness. Inspired by salient viewpoint selection, a new Loop subdivision stencil decision based rapid viewpoint selection algorithm using our new visual perception is also proposed. Experimental results show that the SMTPM scheme can capture more richer visual perception information and our rapid viewpoint selection achieves high efficiency.

  • A Fully Automatic Player Detection Method Based on One-Class SVM

    Xuefeng BAI  Tiejun ZHANG  Chuanjun WANG  Ahmed A. ABD EL-LATIF  Xiamu NIU  

     
    LETTER-Image Recognition, Computer Vision

      Vol:
    E96-D No:2
      Page(s):
    387-391

    Player detection is an important part in sports video analysis. Over the past few years, several learning based detection methods using various supervised two-class techniques have been presented. Although satisfactory results can be obtained, a lot of manual labor is needed to construct the training set. To overcome this drawback, this letter proposes a player detection method based on one-class SVM (OCSVM) using automatically generated training data. The proposed method is evaluated using several video clips captured from World Cup 2010, and experimental results show that our approach achieves a high detection rate while keeping the training set construction's cost low.

  • CBRISK: Colored Binary Robust Invariant Scalable Keypoints

    Huiyun JING  Xin HE  Qi HAN  Xiamu NIU  

     
    LETTER-Image Recognition, Computer Vision

      Vol:
    E96-D No:2
      Page(s):
    392-395

    BRISK (Binary Robust Invariant Scalable Keypoints) works dramatically faster than well-established algorithms (SIFT and SURF) while maintaining matching performance. However BRISK relies on intensity, color information in the image is ignored. In view of the importance of color information in vision applications, we propose CBRISK, a novel method for taking into account color information during keypoint detection and description. Instead of grayscale intensity image, the proposed approach detects keypoints in the photometric invariant color space. On the basis of binary intensity BRISK (original BRISK) descriptor, the proposed approach embeds binary invariant color presentation in the CBRISK descriptors. Experimental results show that CBRISK is more discriminative and robust than BRISK with respect to photometric variation.

  • 3D Mesh Segmentation Based on Markov Random Fields and Graph Cuts

    Zhenfeng SHI  Dan LE  Liyang YU  Xiamu NIU  

     
    LETTER-Computer Graphics

      Vol:
    E95-D No:2
      Page(s):
    703-706

    3D Mesh segmentation has become an important research field in computer graphics during the past few decades. Many geometry based and semantic oriented approaches for 3D mesh segmentation has been presented. However, only a few algorithms based on Markov Random Field (MRF) has been presented for 3D object segmentation. In this letter, we present a definition of mesh segmentation according to the labeling problem. Inspired by the capability of MRF combining the geometric information and the topology information of a 3D mesh, we propose a novel 3D mesh segmentation model based on MRF and Graph Cuts. Experimental results show that our MRF-based schema achieves an effective segmentation.

  • Saliency Density and Edge Response Based Salient Object Detection

    Huiyun JING  Qi HAN  Xin HE  Xiamu NIU  

     
    LETTER-Image Recognition, Computer Vision

      Vol:
    E96-D No:5
      Page(s):
    1243-1246

    We propose a novel threshold-free salient object detection approach which integrates both saliency density and edge response. The salient object with a well-defined boundary can be automatically detected by our approach. Saliency density and edge response maximization is used as the quality function to direct the salient object discovery. The global optimal window containing a salient object is efficiently located through the proposed saliency density and edge response based branch-and-bound search. To extract the salient object with a well-defined boundary, the GrabCut method is applied, initialized by the located window. Experimental results show that our approach outperforms the methods only using saliency or edge response and achieves a comparable performance with the best state-of-the-art method, while being without any threshold or multiple iterations of GrabCut.

  • A Multi-Scale Structural Degradation Metric for Perceptual Evaluation of 3D Mesh Simplification

    Zhenfeng SHI  Xiamu NIU  Liyang YU  

     
    PAPER-Computer Graphics

      Vol:
    E95-D No:7
      Page(s):
    1989-2001

    Visual degradation is usually introduced during 3D mesh simplification. The main issue in mesh simplification is to maximize the simplification ratio while minimizing the visual degradation. Therefore, effective and objective evaluation of the visual degradation is essential in order to select the simplification ratio. Some objective geometric and subjective perceptual metrics have been proposed. However, few objective metrics have taken human visual characteristics into consideration. To evaluate the visual degradation introduced by mesh simplification for a 3D triangular object, we integrate the structural degradation with mesh saliency and propose a new objective and multi-scale evaluation metric named Global Perceptual Structural Degradation (GPSD). The proper selection of the simplification ratio under a given distance-to-viewpoint is also discussed in this paper. The accuracy and validity of the proposed metric have been demonstrated through subjective experiments. The experimental results confirm that the GPSD metric shows better 3D model-based multi-scale perceptual evaluation capability.

  • Detection of Image Region Duplication Using Spin Image

    Xianhua SONG  Shen WANG  Siuming YIU  Lin JIANG  Xiamu NIU  

     
    LETTER-Image Processing and Video Processing

      Vol:
    E96-D No:7
      Page(s):
    1565-1568

    Passive-blind image forensics is a technique that judges whether an image is forged in the absence of watermarking. In image forgery, region duplication is a simple and widely used method. In this paper, we proposed a novel method to detect image region duplication using the spin image which is an intensity-based and rotation invariant descriptor. The method can detect region duplication exactly and is robust to geometric transformations. Furthermore, it is superior to the popular SIFT-based detection method when the copied patch is from smooth background. The experiments have proved the method's effectiveness.

  • A Countermeasure against Double Compression Based Image Forensic

    Shen WANG  Xiamu NIU  

     
    LETTER-Image Processing and Video Processing

      Vol:
    E95-D No:10
      Page(s):
    2577-2580

    Compressing a JPEG image twice will greatly decrease the values of some of its DCT coefficients. This effect can be easily detected by statistics methods. To defend this forensic method, we establish a model to evaluate the security and image quality influenced by the re-compression. Base on the model, an optimized adjustment of the DCT coefficients is achieved by Genetic Algorithm. Results show that the traces of double compression are removed while preserving image quality.

  • Region Diversity Based Saliency Density Maximization for Salient Object Detection

    Xin HE  Huiyun JING  Qi HAN  Xiamu NIU  

     
    LETTER-Image

      Vol:
    E96-A No:1
      Page(s):
    394-397

    Existing salient object detection methods either simply use a threshold to detect desired salient objects from saliency map or search the most promising rectangular window covering salient objects on the saliency map. There are two problems in the existing methods: 1) The performance of threshold-dependent methods depends on a threshold selection and it is difficult to select an appropriate threshold value. 2) The rectangular window not only covers the salient object but also contains background pixels, which leads to imprecise salient object detection. For solving these problems, a novel saliency threshold-free method for detecting the salient object with a well-defined boundary is proposed in this paper. We propose a novel window search algorithm to locate a rectangular window on our saliency map, which contains as many as possible pixels belonging the salient object and as few as possible background pixels. Once the window is determined, GrabCut is applied to extract salient object with a well-defined boundary. Compared with existing methods, our approach doesn't need any threshold to binarize the saliency map and additional operations. Experimental results show that our approach outperforms 4 state-of-the-art salient object detection methods, yielding higher precision and better F-Measure.

  • Finger Vein Recognition with Gabor Wavelets and Local Binary Patterns

    Jialiang PENG  Qiong LI  Ahmed A. ABD EL-LATIF  Ning WANG  Xiamu NIU  

     
    LETTER-Pattern Recognition

      Vol:
    E96-D No:8
      Page(s):
    1886-1889

    In this paper, a new finger vein recognition method based on Gabor wavelet and Local Binary Pattern (GLBP) is proposed. In the new scheme, Gabor wavelet magnitude and Local Binary Pattern operator are combined, so the new feature vector has excellent stability. We introduce Block-based Linear Discriminant Analysis (BLDA) to reduce the dimensionality of the GLBP feature vector and enhance its discriminability at the same time. The results of an experiment show that the proposed approach has excellent performance compared to other competitive approaches in current literatures.

  • Co-saliency Detection Linearly Combining Single-View Saliency and Foreground Correspondence

    Huiyun JING  Xin HE  Qi HAN  Xiamu NIU  

     
    LETTER-Image Recognition, Computer Vision

      Pubricized:
    2015/01/05
      Vol:
    E98-D No:4
      Page(s):
    985-988

    The research of detecting co-saliency over multiple images is just beginning. The existing methods multiply the saliency on single image by the correspondence over multiple images to estimate co-saliency. They have difficulty in highlighting the co-salient object that is not salient on single image. It is caused by two problems. (1) The correspondence computation lacks precision. (2) The co-saliency multiplication formulation does not fully consider the effect of correspondence for co-saliency. In this paper, we propose a novel co-saliency detection scheme linearly combining foreground correspondence and single-view saliency. The progressive graph matching based foreground correspondence method is proposed to improve the precision of correspondence computation. Then the foreground correspondence is linearly combined with single-view saliency to compute co-saliency. According to the linear combination formulation, high correspondence could bring about high co-saliency, even when single-view saliency is low. Experiments show that our method outperforms previous state-of-the-art co-saliency methods.

  • A Novel Expression Deformation Model for 3D Face Recognition

    Chuanjun WANG  Li LI  Xuefeng BAI  Xiamu NIU  

     
    LETTER-Image Recognition, Computer Vision

      Vol:
    E95-D No:12
      Page(s):
    3113-3116

    The accuracy of non-rigid 3D face recognition is highly influenced by the capability to model the expression deformations. Given a training set of non-neutral and neutral 3D face scan pairs from the same subject, a set of Fourier series coefficients for each face scan is reconstructed. The residues on each frequency of the Fourier series between the finely aligned pairs contain the expression deformation patterns and PCA is applied to learn these patterns. The proposed expression deformation model is then built by the eigenvectors with top eigenvalues from PCA. Recognition experiments are conducted on a 3D face database that features a rich set of facial expression deformations, and experimental results demonstrate the feasibility and merits of the proposed model.

  • A Novel Bayes' Theorem-Based Saliency Detection Model

    Xin HE  Huiyun JING  Qi HAN  Xiamu NIU  

     
    LETTER-Image Recognition, Computer Vision

      Vol:
    E94-D No:12
      Page(s):
    2545-2548

    We propose a novel saliency detection model based on Bayes' theorem. The model integrates the two parts of Bayes' equation to measure saliency, each part of which was considered separately in the previous models. The proposed model measures saliency by computing local kernel density estimation of features in the center-surround region and global kernel density estimation of features at each pixel across the whole image. Under the proposed model, a saliency detection method is presented that extracts DCT (Discrete Cosine Transform) magnitude of local region around each pixel as the feature. Experiments show that the proposed model not only performs competitively on psychological patterns and better than the current state-of-the-art models on human visual fixation data, but also is robust against signal uncertainty.