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Review of gaze tracking and its application in intelligent education
ZHANG Junjie, SUN Guangmin, ZHENG Kun
Journal of Computer Applications    2020, 40 (11): 3346-3356.   DOI: 10.11772/j.issn.1001-9081.2020040443
Abstract395)      PDF (1506KB)(651)       Save
Combining artificial intelligence with education is one of the hottest topics of artificial intelligence research. It is important to obtain learning state information in intelligent education. The changes of sight line can reflect mental and state changes directly or indirectly. Thus, gaze tracking plays an important role in the field of intelligent education. Firstly, the development of intelligent education was introduced. Then, the development, current research works and research status of gaze tracking technology were summed up and analyzed. And the related applications and research work of gaze tracking technology in education field of the past three years were summarized. Finally, the summary and prospect of the development trend of gaze tracking in education field were given.
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Fabric defect detection algorithm based on Radon-wavelet low resolution
ZHU Zhongyang, XIAO Zhiyun, SUN Guangmin, QI Yongsheng
Journal of Computer Applications    2015, 35 (3): 863-867.   DOI: 10.11772/j.issn.1001-9081.2015.03.863
Abstract609)      PDF (795KB)(400)       Save

In view of the problems in the textile process, a novel fabric defect segmentation method-quartering method and a fabric defect feature extraction method-Radon Wavelet Low Resolution Characteristic (RWLRC) was presented, which were respectively used for fabric defect detection and classification. According to this method, the fabric image was preprocessed by using Gabor filter, and then the fabric image was divided into four parts, the threshold for segmenting the fabric defect was determined by four parts' maximum value and minimum value. After that the Radon transform was used to binary image and characteristic curve was got. Meanwhile Mallat pyramidal decomposition algorithm was used for feature dimension reduction. Finally, the neural network was used to the state recognition and characteristic classification. The experimental results show that quartering method does not need to contrast with the other normal fabric images and has good adaptability. RWLRC only has three eigenvalues and has the characteristics of low dimension and accurate description of defect shape, the proposed method can efficiently inspect and recognize four common fabric defects:weft-lacking, warp-lacking, oil stains and holes.

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