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[Author] Tao LU(10hit)

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  • Attacking Subsampling-Based Watermarking

    Wei LU  Hongtao LU  Fu-Lai CHUNG  

     
    LETTER-Information Security

      Vol:
    E88-A No:11
      Page(s):
    3239-3240

    This letter describes a permutation attack (PA) to the subsampling-based watermarking scheme where the high correlations between subimages obtained by subsampling the original image are used for watermark embedding. We show that the correlations can also be easily used to attack the watermarking scheme through a simple permutation procedure, while the quality degradation of attacked watermarked image is visually acceptable. Experimental results show the efficiency of the proposed attack algorithm.

  • Multi Feature Fusion Attention Learning for Clothing-Changing Person Re-Identification

    Liwei WANG  Yanduo ZHANG  Tao LU  Wenhua FANG  Yu WANG  

     
    LETTER-Image

      Pubricized:
    2022/01/25
      Vol:
    E105-A No:8
      Page(s):
    1170-1174

    Person re-identification (Re-ID) aims to match the same pedestrain identity images across different camera views. Because pedestrians will change clothes frequently for a relatively long time, while many current methods rely heavily on color appearance information or only focus on the person biometric features, these methods make the performance dropped apparently when it is applied to Clohting-Changing. To relieve this dilemma, we proposed a novel Multi Feature Fusion Attention Network (MFFAN), which learns the fine-grained local features. Then we introduced a Clothing Adaptive Attention (CAA) module, which can integrate multiple granularity features to guide model to learn pedestrain's biometric feature. Meanwhile, in order to fully verify the performance of our method on clothing-changing Re-ID problem, we designed a Clothing Generation Network (CGN), which can generate multiple pictures of the same identity wearing different clothes. Finally, experimental results show that our method exceeds the current best method by over 5% and 6% on the VCcloth and PRCC datasets respectively.

  • Scheduling Algorithms for OBS Switch with Shared Buffer

    Hao CHI  Qingji ZENG  Huandong ZHAO  Jiangtao LUO  Zhizhong ZHANG  

     
    LETTER-Switching

      Vol:
    E86-B No:7
      Page(s):
    2220-2223

    The conservative mode and the greedy mode scheduling algorithms for OBS switch with shared buffer are presented and discussed. Their performance is evaluated by computer simulations, as well as that of the greedy mode with void-filling algorithm. Simulation results show that the conservative mode and the greedy mode have different characteristics under different input load. The greedy mode and the conservative mode are more applicable in a real system than that with void-filling, owing to their lower computational complexity and FIFO characteristic. Finally, a composite algorithm integrated by the conservative mode and the greedy mode is proposed, which is adapted to the input load with the help of an input load monitor. The simulation results reveal that it has favorable performance under different load.

  • Adaptive Control Framework and Its Applications in Real-Time Multimedia Service on the Internet Architecture

    Michael Junke HU  Tao LUO  

     
    PAPER-Communication Networks and Services

      Vol:
    E82-B No:7
      Page(s):
    998-1008

    The concept of controlled resource sharing and dynamic quality of service (QoS) on the next generation Internet has attracted much attention recently. It is suggested that, by imposing real-time revision of shared resource allocated to individual media streams or data flows according to user/application QoS demand and resource availability, more balanced and efficient multimedia services can be provided. In this paper, we present an Adaptive Control Framework (ACF), which is developed for controlled resource sharing and dynamic QoS in real-time multimedia service. We discuss main elements of ACF including 1) Control schemes applicable in the framework, and 2) Control mechanisms used in ACF. It is clearly shown in this paper that, with control schemes and mechanisms incorporated in ACF and supportive algorithms and protocols for ACF applications on the Internet, more flexible service and better overall performance in terms of packet loss, latency, signal-noise ratio and re-synchronization delay, can be offered.

  • Blind Fake Image Detection Scheme Using SVD

    Wei LU  Fu-Lai CHUNG  Hongtao LU  

     
    LETTER-Multimedia Systems for Communications

      Vol:
    E89-B No:5
      Page(s):
    1726-1728

    The release of image processing techniques make image modification and fakery easier. Image fakery, here, is defined as a process to copy a region of source image and paste it onto the destination image, with some post processing methods applied, such as boundary smoothing, blurring, etc. to make it natural. The most important characteristic of image fakery is object copy and paste. In order to detect fake images, this letter introduces a blind detection scheme based on singular value decomposition (SVD). Experimental results also show the effectiveness of the proposed scheme.

  • Face Hallucination via Multi-Scale Structure Prior Learning

    Yuexi YAO  Tao LU  Kanghui ZHAO  Yanduo ZHANG  Yu WANG  

     
    LETTER-Image

      Pubricized:
    2022/07/19
      Vol:
    E106-A No:1
      Page(s):
    92-96

    Recently, the face hallucination method based on deep learning understands the mapping between low-resolution (LR) and high-resolution (HR) facial patterns by exploring the priors of facial structure. However, how to maintain the face structure consistency after the reconstruction of face images at different scales is still a challenging problem. In this letter, we propose a novel multi-scale structure prior learning (MSPL) for face hallucination. First, we propose a multi-scale structure prior block (MSPB). Considering the loss of high-frequency information in the LR space, we mainly process the input image in three different scale ascending dimensional spaces, and map the image to the high dimensional space to extract multi-scale structural prior information. Then the size of feature maps is recovered by downsampling, and finally the multi-scale information is fused to restore the feature channels. On this basis, we propose a local detail attention module (LDAM) to focus on the local texture information of faces. We conduct extensive face hallucination reconstruction experiments on a public face dataset (LFW) to verify the effectiveness of our method.

  • Multi-View Texture Learning for Face Super-Resolution

    Yu WANG  Tao LU  Feng YAO  Yuntao WU  Yanduo ZHANG  

     
    PAPER-Image Recognition, Computer Vision

      Pubricized:
    2021/03/24
      Vol:
    E104-D No:7
      Page(s):
    1028-1038

    In recent years, single face image super-resolution (SR) using deep neural networks have been well developed. However, most of the face images captured by the camera in a real scene are from different views of the same person, and the existing traditional multi-frame image SR requires alignment between images. Due to multi-view face images contain texture information from different views, which can be used as effective prior information, how to use this prior information from multi-views to reconstruct frontal face images is challenging. In order to effectively solve the above problems, we propose a novel face SR network based on multi-view face images, which focus on obtaining more texture information from multi-view face images to help the reconstruction of frontal face images. And in this network, we also propose a texture attention mechanism to transfer high-precision texture compensation information to the frontal face image to obtain better visual effects. We conduct subjective and objective evaluations, and the experimental results show the great potential of using multi-view face images SR. The comparison with other state-of-the-art deep learning SR methods proves that the proposed method has excellent performance.

  • Face Super-Resolution via Triple-Attention Feature Fusion Network

    Kanghui ZHAO  Tao LU  Yanduo ZHANG  Yu WANG  Yuanzhi WANG  

     
    LETTER-Image

      Pubricized:
    2021/10/13
      Vol:
    E105-A No:4
      Page(s):
    748-752

    In recent years, compared with the traditional face super-resolution (SR) algorithm, the face SR based on deep neural network has shown strong performance. Among these methods, attention mechanism has been widely used in face SR because of its strong feature expression ability. However, the existing attention-based face SR methods can not fully mine the missing pixel information of low-resolution (LR) face images (structural prior). And they only consider a single attention mechanism to take advantage of the structure of the face. The use of multi-attention could help to enhance feature representation. In order to solve this problem, we first propose a new pixel attention mechanism, which can recover the structural details of lost pixels. Then, we design an attention fusion module to better integrate the different characteristics of triple attention. Experimental results on FFHQ data sets show that this method is superior to the existing face SR methods based on deep neural network.

  • Semantic Guided Infrared and Visible Image Fusion

    Wei WU  Dazhi ZHANG  Jilei HOU  Yu WANG  Tao LU  Huabing ZHOU  

     
    LETTER-Image

      Pubricized:
    2021/06/10
      Vol:
    E104-A No:12
      Page(s):
    1733-1738

    In this letter, we propose a semantic guided infrared and visible image fusion method, which can train a network to fuse different semantic objects with different fusion weights according to their own characteristics. First, we design the appropriate fusion weights for each semantic object instead of the whole image. Second, we employ the semantic segmentation technology to obtain the semantic region of each object, and generate special weight maps for the infrared and visible image via pre-designed fusion weights. Third, we feed the weight maps into the loss function to guide the image fusion process. The trained fusion network can generate fused images with better visual effect and more comprehensive scene representation. Moreover, we can enhance the modal features of various semantic objects, benefiting subsequent tasks and applications. Experiment results demonstrate that our method outperforms the state-of-the-art in terms of both visual effect and quantitative metrics.

  • Face Super-Resolution via Hierarchical Multi-Scale Residual Fusion Network

    Yu WANG  Tao LU  Zhihao WU  Yuntao WU  Yanduo ZHANG  

     
    LETTER-Image

      Pubricized:
    2021/03/03
      Vol:
    E104-A No:9
      Page(s):
    1365-1369

    Exploring the structural information as prior to facial images is a key issue of face super-resolution (SR). Although deep convolutional neural networks (CNNs) own powerful representation ability, how to accurately use facial structural information remains challenges. In this paper, we proposed a new residual fusion network to utilize the multi-scale structural information for face SR. Different from the existing methods of increasing network depth, the bottleneck attention module is introduced to extract fine facial structural features by exploring correlation from feature maps. Finally, hierarchical scales of structural information is fused for generating a high-resolution (HR) facial image. Experimental results show the proposed network outperforms some existing state-of-the-art CNNs based face SR algorithms.