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Yunlan Tan [3]Yun Tan [1]
  1.  8
    Global trends of research on depression in breast cancer: A bibliometric study based on VOSviewer.Ling Chen, Tingting Ren, Yun Tan & Hong Li - 2022 - Frontiers in Psychology 13.
    BackgroundDepression is common psychiatric morbidity in breast cancer survivors, seriously affecting patients’ quality of life and mental health. A growing body of research has investigated depression in breast cancer. However, no visual bibliometric analysis was conducted in this field. This study aimed to visualize the literature to identify hotspots and frontiers in research on breast cancer and depression.MethodsThe publications related to depression in breast cancer were retrieved in the Web of Science Core Collection between 1 January 2002 and 17 March (...)
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  2.  8
    A New Image Enhancement Algorithm via Wavelet Homomorphic Filtering Transform.Huixian Duan, Xianglong Xu, Yunlan Tan, Guangyao Li & Chao Li - 2012 - Journal of Intelligent Systems 21 (4):349-362.
    . A new spatial-frequency image enhancement algorithm via wavelet homomorphic filtering transform is proposed to enhance the contrast of an image. The wavelet analysis coefficients are processed using a high-pass filter to amplify the high spatial frequencies and attenuate the low spatial frequencies. So the object features can be emphasized while the undesired contributions within the image due to light source nonuniformity can be reduced. Experimental results show that this new algorithm can gain better performance in enhancing the local contrast (...)
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  3.  14
    Enhancement of Medical Image Details via Wavelet Homomorphic Filtering Transform.Chao Li, Huixian Duan, Guangyao Li & Yunlan Tan - 2014 - Journal of Intelligent Systems 23 (1):83-94.
    A new medical image enhancement algorithm based on spatial frequency domain is presented in this article. The medical image is first divided into several sub-images based on dyadic wavelet scale analysis. At each level, different directional sub-band images can reflect the different characteristics of the image. A low-frequency sub-band image maintains the original image content information, and high-frequency sub-band images represent image details such as edges and regional boundaries. The corresponding sub-band images are then enhanced by different Butterworth homomorphic filtering (...)
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  4.  14
    A Novel Approach for Image Enhancement via Nonsubsampled Contourlet Transform.Weidong Tang, Wenlang Luo, Guangyao Li, Chao Li & Yunlan Tan - 2014 - Journal of Intelligent Systems 23 (3):345-355.
    An improved image enhancement approach via nonsubsampled contourlet transform is proposed in this article. We constructed a geometric image transform by combining nonsubsampled directional filter banks and a nonlinear mapping function. Here, the NSCT of the input image is first decomposed for L-levels and its noise standard deviation is estimated. It is followed by calculating the noise variance and threshold calculation, and computing the magnitude of the corresponding coefficients in all directional subbands. Then, the nonlinear mapping function is used to (...)
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