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  1. No Access

    Article

    Dimensionality reduction by t-Distribution adaptive manifold embedding

    High-dimensional data are difficult to explore and analyze due to they are highly correlative and redundant. Although previous dimensionality reduction methods have achieved promising performance, there are st...

    Changpeng Wang, Linlin Feng, Lijuan Yang, Tianjun Wu in Applied Intelligence (2023)

  2. Article

    Correction to: robust two-phase registration method for three-dimensional point set under the bayesian mixture framework

    Lijuan Yang, Nannan Ji, Changpeng Wang in International Journal of Machine Learning … (2023)

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    Article

    Robust two-phase registration method for three-dimensional point set under the Bayesian mixture framework

    In order to establish effective correspondences, a two-phase registration method for three-dimensional point set is proposed under the Bayesian mixture framework. In the first phase, the mixture model consiste...

    Lijuan Yang, Nannan Ji, Changpeng Wang in International Journal of Machine Learning … (2023)

  4. No Access

    Article

    Semi-supervised nonnegative matrix factorization with positive and negative label propagations

    Semi-supervised nonnegative matrix factorization (SNMF) methods yield the enhanced representation ability over nonnegative matrix factorization (NMF) by incorporating the label information. Label propagation (...

    Changpeng Wang, Jiangshe Zhang, Tianjun Wu, Meng Zhang, Guang Shi in Applied Intelligence (2022)

  5. No Access

    Article

    Face clustering via learning a sparsity preserving low-rank graph

    Face clustering aims to group the face images without any label information into clusters, and has recently attracted considerable attention in machine learning and data mining. Many graph based clustering met...

    Changpeng Wang, Jiangshe Zhang, Xueli Song, Tianjun Wu in Multimedia Tools and Applications (2020)

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    Article

    Geo-parcel-based geographical thematic map** using C5.0 decision tree: a case study of evaluating sugarcane planting suitability

    Geographical thematic map** based on spatial information can effectively support scientific decision-making in Geosciences. To obtain finer spatial decision information, this paper proposes a geo-parcel-base...

    Tianjun Wu, Wen Dong, Jiancheng Luo, Yingwei Sun, Qiting Huang in Earth Science Informatics (2019)

  7. No Access

    Article

    Computationally Efficient Mean-Shift Parallel Segmentation Algorithm for High-Resolution Remote Sensing Images

    In high-resolution remote sensing image processing, segmentation is a crucial step that extracts information within the object-based image analysis framework. Because of its robustness, mean-shift segmentation...

    Tianjun Wu, Liegang **a, Jiancheng Luo in Journal of the Indian Society of Remote Se… (2018)

  8. Article

    Open Access

    Simple Risk Score for Prediction of Early Recurrence of Hepatocellular Carcinoma within the Milan Criteria after Orthotopic Liver Transplantation

    Ten to twenty percent of the hepatocellular carcinoma (HCC) patients fulfilling the Milan criteria (MC) recurred within three years after orthotopic liver transplantation (OLT). We therefore utilize a training...

    Jiliang Feng, Jushan Wu, Ruidong Zhu, Dezhao Feng, Lu Yu, Yan Zhang in Scientific Reports (2017)

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    Article

    Prior Knowledge-Based Automatic Object-Oriented Hierarchical Classification for Updating Detailed Land Cover Maps

    Automatic information extraction from optical remote sensing images is still a challenge for large-scale remote sensing applications. For instance, artificial sample collection cannot achieve an automatic remo...

    Tianjun Wu, Jiancheng Luo, Liegang **a in Journal of the Indian Society of Remote Se… (2015)

  10. No Access

    Article

    Scaled total-least-squares-based registration for optical remote sensing imagery

    In optical image registration, the reference control points (RCPs) used as explanatory variables in the polynomial regression model are generally assumed to be error free. However, this most frequently used as...

    Yong Ge, Tianjun Wu, Jianghao Wang, Jianghong Ma, Yunyan Du in Earth Science Informatics (2012)