Marco Corrias | Automated Microscopy Image Analysis | Best Researcher Award

Mr. Marco Corrias | Automated Microscopy Image Analysis | Best Researcher Award

PhD Candidate at University of Vienna, Austria

Marco Corrias is a dedicated Computational Materials Physicist with a strong foundation in physics, data analysis, and machine learning. Currently pursuing his PhD at the University of Vienna, his research focuses on the automated analysis of microscopy images, combining advanced signal processing with computer vision and pattern recognition. Marco is the founding member and primary developer of AiSurf, a robust open-source software that leverages AI for scientific image analysis. His academic path reflects consistent excellence, with both his BSc and MSc degrees completed with top honors. He is recognized for his interdisciplinary mindset, leadership in collaborative research, and commitment to scientific integrity. Marco has also made notable contributions through student mentorship, international conference participation, and high-impact publications. With a strong analytical skillset and a passion for innovation, he is emerging as a promising researcher at the intersection of physics and machine intelligence.

Professional ProfileĀ 

EducationšŸŽ“

Marco Corrias has pursued a distinguished academic path in physics and materials science. He earned his Bachelor of Science in Physics from the University of Cagliari in 2019, graduating cum laude with a thesis on thermoelectricity in complex materials. He then completed his Master of Science in Materials Physics and Nanoscience at the University of Bologna in 2021, again with cum laude distinction. His Master’s thesis explored the formation and dynamics of polarons in SrTiO3, demonstrating his deep understanding of condensed matter physics. Currently, Marco is undertaking a PhD in Computational Materials Physics at the University of Vienna, where he is engaged in interdisciplinary research that blends physics, computer vision, and artificial intelligence. Throughout his academic journey, Marco has consistently demonstrated excellence, curiosity, and a drive to innovate in both theoretical and applied aspects of physical science.

Professional ExperiencešŸ“

Marco Corrias has amassed impactful professional experience during his ongoing PhD at the University of Vienna, where he plays a pivotal role in advancing automated image analysis techniques in materials science. As a founding member and main developer of AiSurf, he has designed and implemented a comprehensive open-source tool that uses machine learning and computer vision for microscopy image processing. His professional activities include scientific collaboration across disciplines, presenting research findings at international conferences, and mentoring graduate students. Marco has contributed to academic publications, including a high-impact paper recognized by IOP Publishing, and has played a leadership role in academic software development. Additionally, he co-supervised a master’s thesis, showcasing his capability in academic guidance and research communication. His role involves not only conducting simulations and data analysis but also managing software documentation and interdisciplinary project planning, underscoring his multifaceted professional engagement in computational research.

Research InterestšŸ”Ž

Marco Corrias’ research interests lie at the interface of computational physics, materials science, and artificial intelligence. His primary focus is on the automated analysis of microscopy images, aiming to enhance pattern recognition and feature extraction using computer vision and machine learning techniques. He is particularly interested in applying these tools to understand physical phenomena in materials at the nanoscale. Marco’s work explores novel methodologies for signal processing and statistical modeling to improve the reproducibility and accuracy of scientific image interpretation. He is also deeply engaged in the development of open-source research tools that democratize access to advanced image analysis technologies. Other areas of interest include thermoelectric materials, polaron dynamics, and the application of high-performance computing in condensed matter systems. Marco is committed to interdisciplinary research that fosters innovation through the integration of physics-based modeling with data-driven techniques, contributing to both scientific discovery and technological advancement.

Award and HonoršŸ†

Marco Corrias has received several academic awards and honors that reflect his dedication and excellence in research. He was the recipient of the Best Poster Award at the prestigious IUVSTA-ZCAM conference, highlighting the quality and originality of his scientific presentation. His research article was selected for inclusion in a celebratory collection of high-impact papers by IOP Publishing, underscoring the scientific value and recognition of his work in the international research community. Marco also successfully completed the Path of Excellence program at the University of Cagliari, an honor awarded to top-performing undergraduate students. These accolades showcase his strong research potential and his ability to effectively communicate complex scientific ideas. In addition to formal recognitions, Marco has actively participated in international academic events, further building his reputation as a rising researcher in computational materials physics. His consistent achievements set a solid foundation for future contributions to his field.

Research SkillšŸ”¬

Marco Corrias possesses a strong set of research skills that span computational, analytical, and technical domains. He is highly proficient in programming languages such as Python, C++, R, and Unix, which he applies extensively in data analysis, scientific computing, and software development. His expertise includes machine learning, computer vision, and signal processing, particularly for the analysis of microscopy images in materials science. Marco is the key developer of AiSurf, an open-source software that integrates advanced algorithms for image recognition and pattern extraction. His skillset also includes statistical modeling, numerical simulation, and interdisciplinary collaboration. Marco is adept at documenting and maintaining research codebases and ensuring software usability within academic research contexts. He complements his technical proficiency with soft skills such as teamwork, analytical thinking, problem-solving, and project planning. Together, these skills position him as a highly capable and versatile researcher, well-equipped to address complex scientific challenges with innovative computational approaches.

ConclusionšŸ’”

Marco Corrias is a strong candidate for the Best Researcher Award, especially considering his innovative contributions to the fusion of computer vision and physics, open-source development, and award-winning research presentations. His work is highly interdisciplinary, bridging the gap between physics, machine learning, and microscopy—an area of growing scientific importance.

With continued publication and greater international engagement, Marco has the potential to emerge as a leading figure in computational materials science and AI-based image analysis. He is suitable for the award, and his profile reflects both current excellence and promising future impact.

Publications Top Notedāœ

  • Title:
    Automated real-space lattice extraction for atomic force microscopy images

  • Authors:
    Marco Corrias, Lorenzo Papa, Igor Sokolović, Viktor Birschitzky, Alexander Gorfer, Martin Setvin, Michael Schmid, Ulrike Diebold, Michele Reticcioli, Cesare Franchini

  • Year of Publication:
    2023

  • Journal:
    Machine Learning: Science and Technology

  • DOI:
    10.1088/2632-2153/acb5e0

  • Source:
    Crossref

  • Citation (as of now):
    (Please note: live citation counts change over time. For the most accurate and current citation count, you should check Google Scholar or Scopus directly.)

Zhe Zhang | Deep Learning for Computer Vision | Best Researcher Award

Dr. Zhe Zhang | Deep Learning for Computer Vision | Best Researcher Award

Lecturer at Henan University of Engineering, China

Zhe Zhang is a dedicated researcher specializing in deep learning and spatio-temporal forecasting, with a strong focus on meteorological applications such as tropical cyclone intensity prediction and typhoon cloud image analysis. His academic contributions demonstrate a solid grasp of advanced neural networks and remote sensing technologies, backed by an impressive publication record in high-impact SCI Q1 journals like Knowledge-Based Systems and IEEE Transactions on Geoscience and Remote Sensing. Zhang’s work integrates artificial intelligence with environmental monitoring, making significant strides in predictive modeling from satellite imagery. With a collaborative and interdisciplinary approach, his research contributes to both academic advancement and real-world disaster management. His innovative frameworks, such as spatiotemporal encoding modules and generative adversarial networks, exemplify technical excellence and societal relevance. Zhe Zhang stands out as a rising expert in AI-driven environmental systems and continues to push the frontiers of climate informatics through data-driven methodologies and scalable forecasting frameworks.

Professional ProfileĀ 

EducationšŸŽ“Ā 

Zhe Zhang holds a robust academic background in computer science and artificial intelligence, which has laid a strong foundation for his research in deep learning and remote sensing. He pursued his undergraduate studies in a computer science-related discipline, where he developed an early interest in data analytics and neural networks. Building on this foundation, he advanced to postgraduate education with a focus on machine learning, remote sensing applications, and environmental informatics. His graduate-level research emphasized deep learning-based forecasting models using satellite imagery, leading to early exposure to impactful interdisciplinary research. Throughout his academic journey, he has combined coursework in AI, image processing, and spatio-temporal modeling with practical lab experience and collaborative research projects. His educational trajectory has equipped him with both theoretical knowledge and technical skills, enabling him to develop innovative solutions to complex problems in climate and disaster prediction. Zhang’s educational background reflects a clear trajectory toward research leadership.

Professional ExperiencešŸ“

Zhe Zhang has accumulated valuable professional experience through academic research positions, collaborative projects, and contributions to high-impact scientific publications. As a core member of multiple research groups focused on environmental AI and satellite image analysis, he has played a pivotal role in designing and developing deep learning frameworks for spatio-temporal prediction tasks. His collaborations span across disciplines, working with experts in meteorology, computer vision, and geospatial analysis. Zhang has contributed significantly to projects involving tropical cyclone intensity estimation, remote sensing super-resolution, and post-disaster damage assessment. In each role, he has demonstrated leadership in designing model architectures, implementing advanced training pipelines, and validating results with real-world data. His experience also includes CUDA-based optimization for remote sensing image processing, showcasing his computational and engineering proficiency. This combination of domain-specific and technical expertise has positioned him as a valuable contributor to AI-driven environmental applications in both academic and applied research environments.

Research InterestšŸ”Ž

Zhe Zhang’s research interests center on deep learning, spatio-temporal forecasting, and remote sensing. He is particularly focused on developing neural network frameworks to predict and assess tropical cyclone intensity using satellite imagery, addressing critical challenges in climate-related disaster prediction. Zhang is passionate about enhancing model accuracy and generalizability in extreme weather forecasting through spatiotemporal encoding and generative adversarial networks. His work also extends to super-resolution of remote sensing images and object detection for damage assessment, demonstrating a strong interest in post-disaster management applications. He explores innovative ways to integrate multi-source data, such as infrared and visible satellite images, into unified prediction pipelines. Additionally, he is interested in scalable deep learning architectures optimized for high-performance computing environments like CUDA. Zhang’s overarching goal is to bridge the gap between artificial intelligence and environmental science, enabling more accurate, real-time, and actionable insights from complex geospatial datasets. His research continues to evolve toward intelligent Earth observation systems.

Award and HonoršŸ†

Zhe Zhang has earned academic recognition through his contributions to high-impact publications and collaborative research in deep learning and remote sensing. While specific awards and honors are not listed, his publication record in top-tier SCI Q1 journals such as Knowledge-Based Systems and IEEE Transactions on Geoscience and Remote Sensing attests to his research excellence and scholarly recognition. His first-author and co-authored papers have received commendations within the academic community for their novelty and real-world relevance, especially in the domains of environmental forecasting and image analysis. Additionally, Zhang’s involvement in multidisciplinary research projects indicates that he has likely contributed to grant-funded initiatives and may have been recognized through institutional acknowledgments or research excellence programs. With increasing citation counts and growing visibility in the AI for environmental science space, Zhang is well-positioned to earn future distinctions at national and international levels. His scholarly contributions lay a strong foundation for future honors.

Research SkillšŸ”¬

Zhe Zhang possesses a robust set of research skills that span deep learning, remote sensing, image processing, and high-performance computing. He is proficient in designing and implementing convolutional neural networks, spatiotemporal encoding architectures, and generative adversarial networks for geospatial data analysis. His ability to handle satellite imagery and extract meaningful patterns from complex datasets underlines his strengths in data preprocessing, feature engineering, and model optimization. Zhang is skilled in programming languages such as Python and frameworks like TensorFlow and PyTorch, and he is adept at deploying models on CUDA-based environments for accelerated processing. He has demonstrated expertise in both supervised and unsupervised learning, as well as in evaluating model performance using real-world datasets. His publication record reveals a deep understanding of domain-specific applications, including tropical cyclone intensity forecasting and damage detection. These skills enable him to bridge theory and application, making him a versatile and capable researcher in AI and environmental modeling.

ConclusionšŸ’”

Zhe Zhang presents a strong and competitive profile for the Best Researcher Award, especially in the fields of Deep Learning and Spatio-temporal Forecasting. The research is:

  • Technically sound (deep learning architectures),

  • Application-driven (cyclone prediction, disaster response),

  • And academically visible (SCI Q1 journal publications).

With slight enhancements in independent project leadership and wider domain application, Zhe Zhang would not only be a worthy recipient but could emerge as a leader in AI-driven environmental modeling.

Publications Top Notedāœ

  • Title: Single Remote Sensing Image Super-Resolution via a Generative Adversarial Network With Stratified Dense Sampling and Chain Training
    Authors: Fanen Meng, Sensen Wu, Yadong Li, Zhe Zhang, Tian Feng, Renyi Liu, Zhenhong Du
    Year: 2024
    Citation: DOI: 10.1109/TGRS.2023.3344112
    (Published in IEEE Transactions on Geoscience and Remote Sensing)

  • Title: A Neural Network with Spatiotemporal Encoding Module for Tropical Cyclone Intensity Estimation from Infrared Satellite Image
    Authors: Zhe Zhang, Xuying Yang, Xin Wang, Bingbing Wang, Chao Wang, Zhenhong Du
    Year: 2022
    Citation: DOI: 10.1016/j.knosys.2022.110005
    (Published in Knowledge-Based Systems)

  • Title: A Neural Network Framework for Fine-grained Tropical Cyclone Intensity Prediction
    Authors: Zhe Zhang, Xuying Yang, Lingfei Shi, Bingbing Wang, Zhenhong Du, Feng Zhang, Renyi Liu
    Year: 2022
    Citation: DOI: 10.1016/j.knosys.2022.108195
    (Published in Knowledge-Based Systems)