Shujiao Liao | Machine Learning | Best Researcher Award

Prof . Shujiao Liao | Machine Learning | Best Researcher Award

Professor at Minnan Normal University, China

Dr. Shujiao Liao is a full professor at the School of Mathematics and Statistics, Minnan Normal University, Zhangzhou, Fujian, China. With a strong academic background in applied mathematics and software engineering, she has dedicated her career to advancing the fields of granular computing, data mining, and machine learning. Her work bridges theoretical mathematics and computational methodologies, enabling novel approaches to intelligent data analysis. Over the years, Dr. Liao has played a pivotal role in both academic teaching and research leadership, contributing significantly to her institution’s development and scholarly output. She has guided numerous students and collaborated across interdisciplinary research groups. Her commitment to innovation and academic excellence makes her a respected figure in her field. As a scholar deeply engaged in cutting-edge technologies and data science trends, she continues to contribute impactful research and strives to address complex problems with analytical precision and computational insight.

Professional Profile 

Education🎓

Dr. Shujiao Liao holds a strong interdisciplinary educational background that underpins her academic career. She earned her Master of Science degree in Applied Mathematics from Shantou University, Guangdong, China, in 2006, where she built a solid foundation in mathematical modeling and analytical reasoning. Her pursuit of advanced studies led her to obtain a Ph.D. degree in Software Engineering from the University of Electronic Science and Technology of China, Chengdu, Sichuan, in 2018. This advanced degree enabled her to integrate mathematical theory with practical software systems, contributing to her versatility in computational research. Her doctoral studies focused on bridging data-centric algorithms with intelligent systems, which now form the core of her research interests. This rich educational trajectory has allowed her to approach complex scientific questions from both a mathematical and engineering perspective, making her academic contributions particularly robust in the fields of data mining and machine learning.

Professional Experience📝

Dr. Shujiao Liao is currently a full professor at the School of Mathematics and Statistics, Minnan Normal University, Zhangzhou, Fujian, China. With an academic career that spans over a decade, she has demonstrated excellence in teaching, research, and academic leadership. In her current role, she teaches advanced mathematics and computational theory courses, supervises postgraduate research projects, and actively engages in departmental development. She has led several internal and collaborative research initiatives in granular computing and machine learning, working closely with both academic and industrial partners. Her experience also includes conference presentations, curriculum development, and cross-disciplinary project coordination. She is recognized for her effective mentorship, contributing to the growth of young researchers and promoting high standards in academic inquiry. Through her consistent professional contributions, Dr. Liao has helped elevate her institution’s research standing and continues to serve as a vital resource for the academic community in mathematics and software research.

Research Interest🔎

Dr. Shujiao Liao’s research interests span several pivotal domains in computer science and applied mathematics, with a particular focus on granular computing, data mining, and machine learning. Her work in granular computing explores how knowledge can be structured and processed using information granules, improving the interpretability and efficiency of decision-making systems. In the area of data mining, she investigates algorithms for pattern discovery, classification, and clustering, contributing to improved data-driven strategies in scientific and industrial applications. Her interests in machine learning include developing intelligent models capable of adaptive learning and robust performance across complex datasets. Dr. Liao’s research bridges theory and application, aiming to solve real-world problems such as intelligent diagnostics, automated reasoning, and big data analysis. Her interdisciplinary focus allows her to work on innovative projects that combine mathematical rigor with computational techniques, positioning her as a contributor to the evolving field of intelligent systems and artificial intelligence.

Award and Honor🏆

While specific awards and honors for Dr. Shujiao Liao were not provided in the given information, her appointment as a full professor reflects recognition of her academic contributions and research leadership. Attaining such a role typically involves competitive peer-reviewed evaluations, consistent scholarly output, and excellence in teaching and mentorship. It is likely that she has received internal university-level commendations, research project funding awards, or participation in prestigious academic panels, common among professors of her standing. If available, details such as Best Paper Awards, Research Excellence Awards, or National Science Grants would further highlight her academic acclaim. Her long-standing role in the academic community and sustained focus on impactful research suggest she is a strong candidate for further honors at national or international levels. Formal acknowledgment through such accolades would complement her already impressive academic and research credentials, reinforcing her eligibility for broader recognitions such as the Best Researcher Award.

Research Skill🔬

Dr. Shujiao Liao possesses a robust set of research skills grounded in both theoretical understanding and practical application. She demonstrates strong expertise in mathematical modeling, algorithm development, and data analysis, which are essential for her work in granular computing and data mining. Her proficiency in applying machine learning techniques to complex datasets enables her to design predictive models with real-world relevance. She is adept at academic writing, literature review, and hypothesis-driven exploration, essential for high-quality publications and grant writing. Additionally, Dr. Liao has strong collaborative and project management skills, allowing her to lead interdisciplinary research teams and coordinate joint research initiatives. Her experience in supervising graduate theses further reflects her ability to guide rigorous research methodologies. She is also likely skilled in programming languages and tools used in data science, such as Python, MATLAB, or R, further supporting her contributions to computational research domains.

Conclusion💡

Dr. Shujiao Liao is a strong candidate for the Best Researcher Award, particularly within fields like granular computing and machine learning. Her academic background and full professorship position suggest a high level of expertise and leadership. To solidify her candidacy for top-tier recognition, showcasing quantifiable research outcomes, international influence, and broader impact will be important.

Publications Top Noted✍

  • Title: WrdaGAN: A text-to-image synthesis pipeline based on Wavelet Representation and Adaptive Sample Domain Constraint strategy
    Authors: Yongchao Qiao, Ya’nan Guan, Shujiao Liao, Wenyuan Yang, Weiping Ding, Lin Ouyang
    Year: 2025
    Citation: DOI: 10.1016/j.engappai.2025.111305

  • Title: Semisupervised Feature Selection With Multiscale Fuzzy Information Fusion: From Both Global and Local Perspectives
    Authors: Nan Zhou, Shujiao Liao, Hongmei Chen, Weiping Ding, Yaqian Lu
    Year: 2025
    Citation: DOI: 10.1109/TFUZZ.2025.3540884

  • Title: S-approximation spaces extension model based on item-polytomous perspective
    Authors: Xiaojie Xie, Shujiao Liao, Jinjin Li
    Year: 2024
    Citation: DOI: 10.21203/rs.3.rs-4447331/v1

  • Title: Multi-Target Rough Sets and Their Approximation Computation with Dynamic Target Sets
    Authors: Wenbin Zheng, Jinjin Li, Shujiao Liao
    Year: 2022
    Citation: DOI: 10.3390/info13080385

  • Title: Multi-Label Attribute Reduction Based on Neighborhood Multi-Target Rough Sets
    Authors: Wenbin Zheng, Jinjin Li, Shujiao Liao, Yidong Lin
    Year: 2022
    Citation: DOI: 10.3390/sym14081652

  • Title: Attribute‐scale selection for hybrid data with test cost constraint: The approach and uncertainty measures
    Authors: Shujiao Liao, Yidong Lin, Jinjin Li, Huiling Li, Yuhua Qian
    Year: 2022
    Citation: DOI: 10.1002/int.22678

  • Title: Feature–granularity selection with variable costs for hybrid data
    Authors: Shujiao Liao, Qingxin Zhu, Yuhua Qian
    Year: 2019
    Citation: DOI: 10.1007/s00500-019-03854-2

Ms. Houda EL Khachine | Machine Learning | Women Researcher Award

Ms. Houda EL Khachine | Machine Learning | Women Researcher Award

Abdelmalek Essaadi University, Morocco

👨‍🎓 Profiles

Scopus

Orcid

Publications

Analysis of Wind Speed Extrapolation and Wind Power Density Assessment in Tetuan City

  • Author: Houda El Khachine, Ouahabi Mohamed Hatim, Driss Taoukil
    Journal: Preprint
    Year: 2024

Improvement of Earth-to-Air Heat Exchanger Performance by Adding Cost-Efficient Soil

  • Author: Houda El Khachine, Mohamed Hatim Ouahabi, Driss Taoukil
    Journal: Energy Exploration & Exploitation
    Year: 2024

Aerodynamic Analysis of Wind Turbine Blade of NACA 0006 Using a CFD Approach

  • Author: Ouahabi M.H., El Khachine H., Benabdelouahab F.
    Journal: Lecture Notes in Electrical Engineering
    Year: 2022

Comparative Study of Five Different Methods of Adjustment by the Weibull Model to Determine the Most Accurate Method of Analyzing Annual Variations of Wind Energy in Tetouan – Morocco

  • Authors: Chika Maduabuchi, Chinedu Nsude, Chibuoke Eneh, Emmanuel Eke, Kingsley Okoli, Emmanuel Okpara, Christian Idogho, Bryan Waya, Catur Harsito
  • Journal: Energies
  • Year: 2023

Assoc Prof Dr. Mohsen Edalat | Machine Learning | Editorial Board Member

Publications

Species distribution modeling of Malva neglecta Wallr. weed using ten different machine learning algorithms: An approach to site-specific weed management (SSWM)

  • Authors: Emran Dastres, Hassan Esmaeili, Mohsen Edalat
  • Journal: European Journal of Agronomy
  • Year: 2025

Habitat Suitability Modeling of Dominant Weed in Rapeseed (Brassica napus) Fields Using Machine Learning Techniques

  • Authors: Emran Dastres, Ghazal Shafiee Sarvestani, Mohsen Edalat, Hamid Reza Pourghasemi
  • Journal: Weed Science
  • Year: 2025

Effects of burial in soil on seed longevity and germinability of the winter annual weed wild barley (Hordeum spontaneum)

  • Authors: Elham Nozarpour, Mohsen Edalat, Elias Soltani, Jerry Mack Baskin, Seyed Abdolreza Kazemeini
    Journal: Weed Biology and Management
    Y ear: 2024

Mr. Christian Idogho | Machine Learning | Best Researcher Award

Publications

Logical reasoning for human activity recognition based on multisource data from wearable device

  • Authors: Christian Idogho, Emmanuel Owoicho Abah, Joy Ojodunwene Onuhc, Catur Harsito, Kenneth Omenkaf, Akeghiosi Samuel, Abel Ejila, Idoko Peter Idoko, Ummi Ene Ali
  • Journal: Energy Science & Engineering
  • Year: 2025

Challenges and Opportunities in Nigeria’s Renewable Energy Policy and Legislation

  • Authors: Peter Onuh, James O Ejiga, Emmanuel O Abah, Joy Ojodunwene Onuh, Christian Idogho, Joseph Omale
  • Journal: World Journal of Advanced Research and Reviews
  • Year: 2024

Mathematical modeling and simulations using software like MATLAB, COMSOL and Python

  • Authors: Idoko Peter Idoko, Gerald Chekwube Ezeamii, Christian Idogho, Enemali Peter, US Obot, VA Iguoba
  • Journal: Magna Scientia Advanced Research and Reviews
  • Year: 2024

Renewable energy potential estimation using climatic-weather-forecasting machine learning algorithms

  • Authors: Chika Maduabuchi, Chinedu Nsude, Chibuoke Eneh, Emmanuel Eke, Kingsley Okoli, Emmanuel Okpara, Christian Idogho, Bryan Waya, Catur Harsito
  • Journal: Energies
  • Year: 2023

Dr. Divya Nimma | Machine Learning | Best Researcher Award

Dr. Divya Nimma | Machine Learning | Best Researcher Award

Doctorate at The University of Southern Mississippi, United States

👨‍🎓 Profiles

Scopus

Orcid

Publications

Logical reasoning for human activity recognition based on multisource data from wearable device

  • Authors: Alsaadi, M., Keshta, I., Ramesh, J.V.N., Kiyosov, S., Soni, M.
  • Journal: Scientific Reports
  • Year: 2025

Privacy-preserving explainable AI enable federated learning-based denoising fingerprint recognition model

  • Authors: Byeon, H., Seno, M.E., Nimma, D., Soni, M., Shabaz, M.
  • Journal: Image and Vision Computing
  • Year: 2025

Implications of climate change on freshwater ecosystems and their biodiversity

  • Authors: Nimma, D., Devi, O.R., Laishram, B., Tirth, V., Arabil, A.
  • Journal: Desalination and Water Treatment
  • Year: 2025

IoT-Based Intelligent Energy Management for EV Charging Stations

  • Authors: Dasi, S., Bondalapati, S.R., Subbaraju, M.P., Reddy, R.V.K., Zareena, N.
  • Journal: IAENG International Journal of Computer Science
  • Year: 2024

Correction to: IntelPVT: intelligent patch-based pyramid vision transformers for object detection and classification

  • Authors: Nimma, D., Zhou, Z.
  • Journal: International Journal of Machine Learning and Cybernetics
  • Year: 2024

Dr. Oluwasegun Julius Aroba | Machine Learning | Best Researcher Award

Dr. Oluwasegun Julius Aroba | Machine Learning | Best Researcher Award

Doctorate at Durban University of Technology, South Africa

👨‍🎓 Profiles

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Orcid

Google Scholar

Publications

RSA and Elliptic Curve Encryption System: A Systematic Literature Review

  • Authors: Musa Ugbedeojo, Marion O Adebiyi, Oluwasegun Julius Aroba, Ayodele Ariyo Adebiyi
  • Journal: International Journal of Information Security and Privacy (IJISP)
  • Year: 2024

Professional Leadership Investigation in Big Data and Computer Mediated Communication in Relation to the 11th Sustainable Development Goals (SDG) Global Blueprint

  • Authors: Oluwasegun Julius Aroba
  • Journal: International Journal of Computing Sciences Research
  • Year: 2024

Node localization in wireless sensor networks using a hyper-heuristic DEEC-Gaussian gradient distance algorithm

  • Authors: Oluwasegun Julius Aroba, Nalindren Naicker, Timothy T Adeliyi
  • Journal: Scientific African
  • Year: 2023

An ERP SAP implementation case study of the South African Small Medium Enterprise sectors

  • Authors: Oluwasegun Julius Aroba
  • Journal: International Journal of Computing Sciences Research
  • Year: 2023

An implementation of SAP enterprise resource planning–A case study of the South African revenue services and taxation sectors

  • Authors: Oluwasegun Julius Aroba, Abdultaofeek Abayomi
  • Journal: Cogent Social Sciences
  • Year: 2023

Dr. Alejandro Medina Santiago | Machine Learning | Best Researcher Award

Dr. Alejandro Medina Santiago | Machine Learning | Best Researcher Award

Doctorate at Institute National of Astrophysics, Optics and Electronics, Mexico

👨‍🎓 Profiles

Scopus

Orcid

Publications

TurboPixels: A Superpixel Segmentation Algorithm Suitable for Real-Time Embedded Applications

  • Authors: Aguilar-González, A., Medina Santiago, A., Orozco Torres, J.A., Pérez Patricio, M., Morales-Navarro, N.A.
  • Journal: Applied Sciences (Switzerland)
  • Year: 2024

Object/Scene Recognition Based on a Directional Pixel Voting Descriptor

  • Authors: Aguilar-González, A., Medina Santiago, A., Osuna-Coutiño, J.A.D.J.
  • Journal: Applied Sciences (Switzerland)
  • Year: 2024

Multilayer Fuzzy Inference System for Predicting the Risk of Dropping out of School at the High School Level

  • Authors: Antonio Orozco Torres, J., Santiago, A.M., Manuel Villegas Izaguirre, J., Amador Garcia, M., Falconi Alejandro, G.
  • Journal: IEEE Access
  • Year: 2024

Fault Diagnosis for Takagi-Sugeno Model Wind Turbine Pitch System

  • Authors: Rodriguez, J.I.B., Hernandez-De-Leon, H.R., Marin, J.A., Zapata, B.Y.L., Guzman-Rabasa, J.A.
  • Journal: IEEE Access
  • Year: 2024

Hypertension Diagnosis with Backpropagation Neural Networks for Sustainability in Public Health

  • Authors: Orozco Torres, J.A., Medina Santiago, A., Villegas Izaguirre, J.M., Amador García, M., Delgado Hernández, A.
  • Journal: Sensors
  • Year: 2022

Mr. Adamu Abubakar Sani | Machine Learning | Best Researcher Award

Mr. Adamu Abubakar Sani | Machine Learning | Best Researcher Award

Adamu Abubakar Sani at Universiti Teknologi PETRONAS, Malaysia

👨‍🎓 Profiles

Google Scholar

Publications

A Multi-level Classification Model for Corrosion defects in Oil and Gas Pipelines Using Meta-Learner Ensemble (MLE) Techniques

  • Authors: Adamu Sani Abubakar, Mohamed Mubarak Abdul Wahab, Nasir Shafiq, Kamaludden Usman, Nasir Khan, Adamu Tafida, Arsalan Khan
  • Journal: Journal of Pipeline Science and Engineering
  • Year: 2024

A Review of Eco-Friendly Road Infrastructure Innovations for Sustainable Transportation

  • Authors: Adamu Tafida, Wesam Salah Alaloul, Noor Amila Bt Wan Zawawi, Muhammad Ali Musarat, Adamu Sani Abubakar
  • Journal: Infrastructures
  • Year: 2024

Design and modeling the compressive strength of high-performance concrete with silica fume: a soft computing approach

  • Authors: Abiola Usman Adebanjo, Nasir Shafiq, Siti Nooriza Abd Razak, Vicky Kumar, Syed Ahmad Farhan, Priyanka Singh, Adamu Sanni Abubakar
  • Journal: Soft Computing
  • Year: 2024

Systematic Literature Review and Scientometric Analysis on the Advancements in Electrically Conductive Asphalt Technology for Smart and Sustainable Pavements

  • Authors: Arsalaan Khan Yousafzai, Muslich Hartadi Sutanto, Muhammad Imran Khan, Nura Shehu Aliyu Yaro, Abdullah O Baarimah, Nasir Khan, Abdul Muhaimin Memon, Adamu Sani Abubakar
  • Journal: Transportation Research Record
  • Year: 2024

Integrating Life Cycle Cost Analysis into Pipeline Asset Integrity Management: A Comprehensive Approach in Decision Support Systems

  • Authors: Adamu Sani Abubakar, Mohamed Mubarak Bin Abdul Wahab, Nasir Shafiq, Kamaluddeen U Danyaro, Abiola Usman Adebanjo
  • Journal: Journal of Hunan University Natural Sciences
  • Year: 2024

Assist Prof Dr. Sina Fard Moradinia | Machine Learning | Editorial Board Member

Assist Prof Dr. Sina Fard Moradinia | Machine Learning | Editorial Board Member

Sina Fard Moradinia at Islamic Azad University, Iran

👨‍🎓 Profiles

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Summary

Dr. Sina Fard Moradinia is a dedicated Assistant Professor in Civil Engineering with over 20 years of experience specializing in water resources management. He has made significant contributions to both academia and industry through research, teaching, and numerous projects. Dr. Moradinia has been involved in leadership roles, including serving as the Head of the Water Resources Management Working Group and a member of various scientific councils and committees. He is also an accomplished author with expertise in project management, hydraulic structures, and innovative water management techniques.

Education

  • Ph.D. in Civil Engineering (Water Resources) – Iran University of Science and Technology, Tehran, Iran, 2014

💼 Professional Experience

  • Assistant Professor – Islamic Azad University, Tabriz (2002–Present)
  • Head of Water Resources Management Working Group – East Azerbaijan Province Elite Foundation
  • University Representative – Skills Training and Career Counseling Center
  • Civil Engineering Expert – Faraz Ab Consulting Engineers
  • Engineering Services Expert – Dam and Network Activities, River Engineering

🔬 Research Interests

Dr. Moradinia’s research interests focus on water resources management, hydraulic structures, and construction project optimization. His work spans advanced machine learning applications in flood risk assessment, time and cost management in dam projects, and BIM integration in civil engineering. He is also actively engaged in addressing environmental issues such as controlling dust storms in the Urmia Lake basin.

 

Publications

Economic and environmental analysis of EVs’ in urban transportation using system dynamics

  • Authors: Azarnoosh, Z., Moradinia, S.F., Golchin, B., Jani, R.
  • Journal: Sustainable Futures
  • Year: 2024

A novel approach to flood risk zonation: integrating deep learning models with APG in the Aji Chay catchment

  • Authors: Bina, A.A., Moradinia, S.F.
  • Journal: Aqua Water Infrastructure, Ecosystems and Society
  • Year: 2024

Wavelet–ANN hybrid model evaluation in seepage prediction in nonhomogeneous earthen dams

  • Authors: Fatehi-Nobarian, B., Fard Moradinia, S.
  • Journal: Water Practice and Technology
  • Year: 2024

Time and Cost Management in Water Resources Projects Utilizing the Earned Value Method

  • Authors: Hussein, A.R., Moradinia, S.F.
  • Journal: Journal of Studies in Science and Engineering
  • Year: 2024

The prediction of precipitation changes in the Aji-Chay watershed using CMIP6 models and the wavelet neural network

  • Authors: Khoramabadi, F., Moradinia, S.F.
  • Journal: Journal of Water and Climate Change
  • Year: 2024

Ms. Mina Gachloo | Machine Learning | Best Researcher Award

Ms. Mina Gachloo | Machine Learning | Best Researcher Award

Mina Gachloo at university of North Carolina Wilmington, United States

Profiles

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Google Scholar

Education:

Ms. Mina Gachloo is set to graduate with a Master's degree in Computer Science and Information Systems from the University of North Carolina Wilmington in December 2024, boasting a GPA of 3.8. Her research at UNCW, under the guidance of Dr. Yang Song, focuses on "Temporal Prediction of Coastal Water Quality Based on Environmental Factors with Deep Learning." Mina also holds a Bioinformatics Engineering degree from Huazhong Agricultural University in Wuhan, China, where she researched "Embedding of Cancer-Centric Entities and Knowledge Discovery." Additionally, she earned a B.Sc. in Information Technology from the University of Applied Science and Technology in Tehran, and an Associate’s degree in Information and Communication Technology from the University of Culture and Art in Tehran.

Professional Experience:

Ms. Mina has a diverse range of professional experiences. In 2023, she interned as a Data Analyst and Researcher at the UNCW Institutional Research Office, focusing on predicting the time-to-graduate for undergraduate students. As a Teaching and Research Assistant at UNCW, she conducted data cleaning, feature engineering, and implemented machine learning and deep learning models for predictive analysis. Prior to this, she worked as a Commercial Expert at Bam Khodro Company in Tehran, using SQL, Excel, and Python for data extraction, analysis, and report automation. Mina also served as a Financial Expert at Mellat Leasing Bank, facilitating loans and generating customer reports. Her career began in IT at KICCC in Tehran, specializing in Point of Sale devices and Business Intelligence.

Research Interest:

Ms. Mina's research interests include machine learning, deep learning, structure learning, data analysis, natural language processing, and computer vision. She has actively contributed to several projects, such as the construction of the Active Gene Annotation Corpus (AGAC) and the prediction of dissolved oxygen and salinity levels in the Neuse River Estuary using deep learning techniques.

Honors and Awards:

Ms. Mina's academic excellence has been recognized with multiple awards, including the Summer Research Stipend, Support for Undergraduate Research and Creativity Awards (SURCA), and CMS summer stipend at UNCW. She also received scholarships for her M.Sc. in Computer Science and Bioinformatics at Huazhong Agricultural University.

💡 Skills:

Ms. Mina is proficient in data preprocessing, machine learning, deep learning, natural language processing, and programming in Python and Java. She is skilled in using tools like Jupyter Notebook, Google Colab, Pycharm, IDLE, Microsoft Office, Pegasus, SQL, and Oracle.

 Publications:

Using Machine Learning Models for Short-Term Prediction of Dissolved Oxygen in a Microtidal Estuary
  • Authors: Mina Gachloo, Qianqian Liu, Yang Song, Guozhi Wang, Shuhao Zhang, Nathan Hall
  • Year: 2024
An overview of the active gene annotation corpus and the BioNLP OST 2019 AGAC track tasks
  • Authors: Yuxing Wang, Kaiyin Zhou, Mina Gachloo, Jingbo Xia
  • Year: 2019
A review of drug knowledge discovery using BioNLP and tensor or matrix decomposition
  • Authors: Mina Gachloo, Yuxing Wang, Jingbo Xia
  • Year: 2019
GOF/LOF knowledge inference with tensor decomposition in support of high order link discovery for gene, mutation and disease
  • Authors: Kai Yin Zhou, Yu Xing Wang, Sheng Zhang, Mina Gachloo, Jin Dong Kim, Qi Luo, Kevin Bretonnel Cohen, Jing Bo Xia
  • Year: 2019
An active gene annotation corpus and its application on anti-epilepsy drug discovery
  • Authors: Yuxing Wang, Kaiyin Zhou, Jin-Dong Kim, Kevin B Cohen, Mina Gachloo, Yuxin Ren, Shanghui Nie, Xuan Qin, Panzhong Lu, Jingbo Xia
  • Year: 2019