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[Keyword] intensity order(2hit)

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  • Effective and Efficient Image Copy Detection with Resistance to Arbitrary Rotation

    Zhili ZHOU  Ching-Nung YANG  Beijing CHEN  Xingming SUN  Qi LIU  Q.M. Jonathan WU  

     
    PAPER-Data Engineering, Web Information Systems

      Pubricized:
    2016/03/07
      Vol:
    E99-D No:6
      Page(s):
    1531-1540

    For detecting the image copies of a given original image generated by arbitrary rotation, the existing image copy detection methods can not simultaneously achieve desirable performances in the aspects of both accuracy and efficiency. To address this challenge, a novel effective and efficient image copy detection method is proposed based on two global features extracted from rotation invariant partitions. Firstly, candidate images are preprocessed by an averaging operation to suppress noise. Secondly, the rotation invariant partitions of the preprocessed images are constructed based on pixel intensity orders. Thirdly, two global features are extracted from these partitions by utilizing image gradient magnitudes and orientations, respectively. Finally, the extracted features of images are compared to implement copy detection. Promising experimental results demonstrate our proposed method can effectively and efficiently resist rotations with arbitrary degrees. Furthermore, the performances of the proposed method are also desirable for resisting other typical copy attacks, such as flipping, rescaling, illumination and contrast change, as well as Gaussian noising.

  • A Novel Integration of Intensity Order and Texture for Effective Feature Description

    Thao-Ngoc NGUYEN  Bac LE  Kazunori MIYATA  

     
    PAPER-Computer Vision

      Vol:
    E97-D No:8
      Page(s):
    2021-2029

    This paper introduces a novel approach of feature description by integrating the intensity order and textures in different support regions into a compact vector. We first propose the Intensity Order Local Binary Pattern (IO-LBP) operator, which simultaneously encodes the gradient and texture information in the local neighborhood of a pixel. We divide each region of interest into segments according to the order of pixel intensities, build one histogram of IO-LBP patterns for each segment, and then concatenate all histograms to obtain a feature descriptor. Furthermore, multi support regions are adopted to enhance the distinctiveness. The proposed descriptor effectively describes a region at both local and global levels, and thus high performance is expected. Experimental results on the Oxford benchmark and images of cast shadows show that our approach is invariant to common photometric and geometric transformations, such as illumination change and image rotation, and robust to complex lighting effects caused by shadows. It achieves a comparable accuracy to that of state-of-art methods while performs considerably faster.