Prof. Dr. Mohammed Berka | Signal Modulators Awards | Best Researcher Award

Prof. Dr. Mohammed Berka | Signal Modulators Awards | Best Researcher AwardΒ 

Prof. Dr. Mohammed Berka, University of Mascara, Algeria

Dr. Mohammed Berka is an accomplished academic and researcher in the field of Electronics and Telecommunications. He earned his Bachelor’s degree in Mathematics in June 1993 and completed his studies in Electronics Engineering, specializing in Communication, in November 1998. He holds a Diploma of Magister in Electronics with a focus on Signals and Telecommunication Systems, obtained in February 2003, and a Ph.D. in Science in Electronics, concentrating on Telecommunications, awarded in May 2015 from Mustapha Stambouli University in Mascara, Algeria. Dr. [Name] has extensive teaching experience, having served as an Assistant Professor Class “B” from 2004 to 2006, then as Assistant Professor Class “A” from 2006 to 2015, and later as a Class “A” lecturer from 2015 to 2018. He has taught various subjects in telecommunications, including antennas, electromagnetic wave propagation, transmission channels, digital broadcasting, and optical fiber. His research contributions include multiple international publications on metamaterials and their applications in telecommunications, with notable presentations at conferences such as the International Conference on Renewable Energy and the International Conference on Advances in Mechanical Engineering. Dr. [Name]’s innovative work in the design of bandpass filters and photovoltaic cell optimization demonstrates his commitment to advancing the field of Electronics and Telecommunications.

Professional Profile:

GOOGLE SCHOLAR

Summary of Suitability for Best Researcher Award:

Based on the provided information, the candidate demonstrates strong qualifications for the Best Researcher Award in areas related to Metamaterials, Photonics, and Optronics. Below is a summary of the candidate’s strengths

πŸ“š Education

  • πŸŽ“ Bachelor’s Degree in Mathematics – June 1993.
  • πŸŽ“ Electronics Engineer (Communication Option) – November 1998.
  • πŸ“œ Diploma of Magister in Electronics (Option: Signals and Telecommunication Systems) – February 2003.
  • πŸŽ“ Ph.D. in Science in Electronics (Option: Telecommunications) – May 2015.
    • 🏫 Institution: Mustapha Stambouli University, Mascara.

πŸ‘©β€πŸ« Professional Experience

  • Assistant Professor Class “B” – 2004 to 2006.
  • Assistant Professor Class “A” – 2006 to 2015.
  • Lecturer Class “A” (Ph.D.) – 2015 to 2018.

πŸ“– Pedagogical Activities

  • πŸ“‘ Teaching Expertise in Telecommunications:
    • Antennas
    • Propagation of Electromagnetic Waves
    • Transmission Channels
    • Digital Broadcasting
    • Optical Fiber

πŸ§ͺ Research Activities

πŸ“’ International Communications

  1. πŸ› οΈ Design of Bandpass Filter Based on Metamaterial – CIER’14, Tunisia (2014).
  2. πŸŒ€ Electromagnetic Characteristics of Circular Microwave Absorber – EMM-FM, Tunisia (2015).
  3. πŸ“‘ Metamaterial Band Pass Filter Using Defected Ground Structures – Istanbul, Turkey (2016).
  4. πŸ”„ Dual-Band Bandpass Filter with Composite Right/Left-Hand CPW and Ferrite Components – DAT’2017.
  5. 🌞 Photovoltaic Cells Absorption Improvement Using Metasurface – ICAME’19, Turkey (2019).
  6. πŸ“ Triangular Metamaterial Resonator with YIG Substrate – ICAME’19, Turkey (2019).
  7. πŸ” Technological Qualities of Spiral Metasurface Using SRRS Metamaterials – ICAME’19, Turkey (2019).
  8. 🌐 Circular Metamaterials for Optimized Photovoltaic Absorption – ENTECH’19, Turkey (2019).

πŸ† Achievements, Awards, and Honors

  • πŸŽ–οΈ Recognized for significant contributions to the study of metamaterials and their applications in telecommunications.
  • πŸ… Several conference presentations and publications in esteemed international forums.
  • πŸ“˜ Authored research advancing photovoltaic cell technologies and electromagnetic wave propagation.

PublicationΒ Top Notes:

A miniaturized folded square split ring resonator cell based dual band polarization insensitive metamaterial absorber for C-and Ku-band applications

Cited:52

Dual-band bandpass filter based on electromagnetic coupling of twin square metamaterial resonators (SRRs) and complementary resonator (CSRR) for wireless communications

Cited:37

Investigation of a near-perfect quad-band polarization-insensitive metamaterial absorber based on dual-T circular shaped resonator array designed on a silicon substrate for C …

Cited:21

Designing of tri-band bandpass microwave filter based on (E–Z) inter-coupled tapered metamaterial resonators for C-and X-band applications and operations

Cited:19

Investigation of dual-band bandpass filter inspired by a pair of square coupled interlinked asymmetric tapered metamaterial resonator for X-band microwave applications

Cited:18

 

Dr. Longbin Jin | Signal Processing Awards | Best Researcher Award

Dr. Longbin Jin | Signal Processing Awards | Best Researcher AwardΒ 

Dr. Longbin Jin, Konkuk University, South Korea

Longbin Jin, is a Ph.D. candidate in Computer Science at Konkuk University, Korea, with an expected graduation in February 2025. His research focuses on adaptive visual prompting for video action recognition in vision-language models under the guidance of Professor Eun Yi Kim. He holds a Master’s degree in Smart ICT Convergence and a Bachelor’s degree in Mechanical Engineering & Automation from Shanghai University, China. Throughout his academic career, Longbin has received numerous accolades, including winning the ICASSP 2023 SPGC Challenge and multiple Excellence and Encouragement Prizes at the Korea Software Congress. Currently, he serves as an AI Researcher at Voinosis in Seoul, where he develops AI models for early detection of hearing loss and cognitive impairment in the elderly. He is also an instructor at Konkuk University, teaching courses on Artificial Intelligence, Computer Vision, and Machine Learning. His project experience includes collaborations on medical imaging and virtual reality, demonstrating his expertise in applying AI technologies across diverse fields. Longbin is proficient in English, Chinese, and Korean, reflecting his international background and commitment to advancing technology in healthcare and education.

Professional Profile:

GOOGLE SCHOLAR

Research for Community Impact Award: Longbin Jin’s Suitability

Longbin Jin is a highly qualified candidate for the Research for Community Impact Award due to his significant contributions in the fields of artificial intelligence and healthcare, particularly in projects that directly benefit the community.

πŸ“š Education

  • Ph.D. in Computer Science
    Konkuk University, Korea
    Expected: February 2025
    Thesis: Adaptive Visual Prompting for Video Action Recognition in Vision-Language Models
    Advisor: Prof. Eun Yi Kim
  • M.S. in Smart ICT Convergence
    Konkuk University, Korea
    Graduated: August 2020
    Thesis: E-EmoticonNet: EEG-based Emotion Recognition with Context Information
    Advisor: Prof. Eun Yi Kim
  • B.S. in Mechanical Engineering & Automation
    Shanghai University, China
    Graduated: August 2018

πŸ’Ό Work Experience

  • AI Researcher
    Voinosis, Seoul, Korea
    December 2022 – Present

    • Researcher on AI models for early detection of hearing loss and cognitive impairment based on voice analysis for the elderly (VoiceCheck & BrainGuardDoctor Apps).
  • Instructor
    Konkuk University, Seoul, Korea
    March 2022 – Present

    • Teaching courses on Computer Vision, Artificial Intelligence, and Machine Learning.
  • AI Engineer
    Lulla, Seoul, Korea
    October 2022 – November 2022

    • Main researcher for an AI model for a child face-matching system to assist kindergarten teachers (Lulla App).

πŸ† Achievements, Awards, and Honors

  • Winner of ICASSP 2023 SPGC Challenge: Multilingual Alzheimer’s Dementia Recognition through Spontaneous Speech (First Author) πŸ₯‡
  • Excellence Prize, Korea Software Congress 2023 πŸ₯‡
  • Encouragement Prize, ACM Student Research Competition, Computer Human Interaction 2020 (First Author) πŸŽ–οΈ
  • Excellence Prize, Korea Software Congress 2019 (First Author) πŸ…
  • Encouragement Prize, Korea Software Congress 2019 (First Author) πŸŽ–οΈ
  • Excellent Presentation, International Conference on Culture Technology 2018 🌟

PublicationΒ Top Notes:

Interpretable Cross-Subject EEG-Based Emotion Recognition Using Channel-Wise Features†

CITED:29

Consen: Complementary and simultaneous ensemble for alzheimer’s disease detection and mmse score prediction

CITED:15

Eeg-based user identification using channel-wise features

CITED:7

E-EmotiConNet: EEG-based emotion recognition with context information

CITED:2

Emotion Recognition based BCI using Channel-wise Features

CITED:1

 

Kim Bjerge | Signal Processing | Best Researcher Award

Kim Bjerge | Signal Processing | Best Researcher Award

Mr. Kim Bjerge, Aarhus University, Denmark.

Kim Bjerge is an Associate Professor at Aarhus University in the Department of Electrical and Computer Engineering, specializing in Signal Processing and Machine Learning. With a Ph.D. focused on Computer Vision and Deep Learning for Insect Monitoring, Kim combines academic expertise with significant industry experience. He has held various teaching and leadership positions at Aarhus University and has contributed to research projects in computer vision. His work has resulted in a notable H-index of 14 and 1080 citations on Google Scholar. Kim is dedicated to advancing technology in engineering education and research.Β πŸŽ“πŸ’»πŸ“ˆ

Publication ProfilesΒ 

Googlescholoar

Education and Experience

  • Ph.D. in Computer Vision and Deep Learning for Insect MonitoringΒ (Aarhus University, 2022 – present)Β πŸ“š
  • M.Sc. Eng. in Information TechnologyΒ (Aarhus University, 2013)Β πŸ“–
  • B. Eng. in Electronics EngineeringΒ (Engineering College of Aarhus, 1989)Β πŸ”§
  • Associate Professor and Group LeaderΒ (Aarhus University, 2021 – present)Β πŸŽ“
  • Associate Professor and Group Leader, Signal ProcessingΒ (Aarhus University, 2009 – 2020)Β πŸ“Š
  • Senior Consultant, IT-DevelopmentΒ (Danish Technological Institute, 2007 – 2009)Β πŸ› οΈ
  • Software Development ManagerΒ (TC Electronic A/S, 1999 – 2007) 🎢
  • System DeveloperΒ (Crisplant A/S, 1996 – 1999)Β πŸ“¦
  • System ManagerΒ (Sam-system A/S, 1989 – 1996)Β πŸ’Ό

Suitability For The Award

Mr. Kim Bjerge, Associate Professor at Aarhus University’s Department of Electrical and Computer Engineering, is an exemplary candidate for theΒ Best Researcher AwardΒ due to his outstanding contributions to computer vision, deep learning, and signal processing. With a remarkable career spanning academia and industry, he has made groundbreaking advancements in the fields of artificial intelligence, embedded systems, and digital signal processing, impacting both research and application development globally.

Professional Development

Kim Bjerge has pursued extensive professional development through various programs. He completed the Pedagogical Programme in Engineering at the Center for Engineering Education Research and Development, earning 10 ECTS credits. Additionally, he participated in project management training at Provinu and various management courses at Aarhus Business College, enhancing his skills in human resources, organizational strategy, and software engineering. His commitment to ongoing learning ensures that he remains at the forefront of engineering education and technology.Β πŸ“šπŸ”§πŸŒ±

Research Focus

Kim Bjerge’s research focuses on the intersection of computer vision, deep learning, and machine learning, particularly in the context of insect monitoring. His work aims to develop innovative solutions that enhance the understanding and management of ecological systems through advanced image analysis and artificial intelligence techniques. By leveraging his expertise in signal processing, he contributes to the development of cutting-edge technologies that have practical applications in various fields, including agriculture and environmental science.Β πŸŒ±πŸ”πŸ€–

Publication Top NotesΒ 

  • Deep learning and computer vision will transform entomologyΒ – Cited by: 362, Year: 2021Β πŸ“–
  • Towards the fully automated monitoring of ecological communitiesΒ – Cited by: 141, Year: 2022 🌱
  • An automated light trap to monitor moths (Lepidoptera) using computer vision-based tracking and deep learningΒ – Cited by: 119, Year: 2021Β πŸ¦‹
  • Real-time insect tracking and monitoring with computer vision and deep learningΒ – Cited by: 110, Year: 2021Β πŸ“Ή
  • A computer vision system to monitor the infestation level of Varroa destructor in a honeybee colonyΒ – Cited by: 85, Year: 2019 🐝
  • Accurate detection and identification of insects from camera trap images with deep learningΒ – Cited by: 61, Year: 2023Β πŸ”
  • A living laboratory exploring mobile support for everyday life with diabetesΒ – Cited by: 40, Year: 2010Β πŸ“±
  • Hierarchical classification of insects with multitask learning and anomaly detectionΒ – Cited by: 26, Year: 2023Β πŸ“Š
  • Enhancing non-technical skills by a multidisciplinary engineering summer schoolΒ – Cited by: 19, Year: 2017Β πŸŽ“

Dr. Zhigang Zhu | Signal Processing Award | Best Researcher Award

Dr. Zhigang Zhu | Signal Processing Award | Best Researcher Award

Dr. Zhigang Zhu, Xidian University, China

Zhigang Zhu, born on October 27, 1989, is a distinguished postdoctoral researcher in the School of Electronic Engineering at Xidian University. With a robust educational foundation, Zhigang holds a Ph.D. in Control Science and Engineering from Xidian University. His academic journey began at Qingdao University of Technology, where he earned his undergraduate degree in Telecommunication Engineering in 2009.Zhigang’s expertise lies in deep learning and signal processing, with a keen focus on signal representation and recognition. His research achievements are substantial, having published over 20 SCI-indexed papers in prestigious journals such as Remote Sensing, IEEE TAES, IEEE TIM, and IEEE SPL. He is a recognized member of both the Chinese Institute of Electronics (CIE) and the Institute of Electrical and Electronics Engineers (IEEE).

Professional Profile

πŸŽ“ Education & Academic Achievements:

I hold a Ph.D. in Control Science and Engineering from Xidian University, completed in 2015. I began my academic journey with a Bachelor’s degree in Telecommunication Engineering from Qingdao University of Technology in 2009. Currently, I am a postdoctoral researcher in the School of Electronic Engineering at Xidian University. My specialization lies in deep learning and signal processing, particularly in signal representation and signal recognition.

πŸ“š Experience & Professional Engagements:

Since 2015, I have been deeply involved in research and academia. I have led numerous projects, including a significant initiative by the National Natural Science Foundation of China focused on deep learning. My work in electronics science and technology has earned me accolades such as the Shaanxi Higher Education Institutions Scientific Research Outstanding Achievement Award. Additionally, I have made substantial contributions to the field by publishing over 20 SCI-indexed papers in renowned journals like IEEE TAES and IEEE TIM.

🌐 Research & Contributions:

My research interests include computer vision, signal processing, and deep learning. I have been recognized with multiple national and provincial awards for my innovative research and entrepreneurial efforts. As a member of both the Chinese Institute of Electronics (CIE) and the Institute of Electrical and Electronics Engineers (IEEE), I actively contribute to the scientific community. I have also guided a student team to win prestigious awards in competitions such as the Shaanxi Provincial Internet+ Innovation and Entrepreneurship Competition.

πŸ† Recognition & Impact:

My dedication to advancing technology and fostering innovation has been recognized through various awards, including the Excellence Award at the National Post-Doctoral Innovation and Entrepreneurship Competition. I strive to inspire the next generation of researchers and apply my work for the benefit of society.

 

.Publications Notes:πŸ“„

Dr. Sangyeop Lee | Signal Processing | Best Researcher Award

Dr. Sangyeop Lee | Signal Processing | Best Researcher Award

Dr. Sangyeop Lee, LG Electronics, South Korea

Sangyeop Lee, Ph.D., is a seasoned Senior Researcher and Data Scientist at LG Electronics, currently based at the Life Data Fusion Laboratory within the B2B Advanced Technology Center in Seoul, Republic of Korea. With a robust academic background, including a Ph.D. in Computer Science from Yonsei University, Sangyeop has been actively involved in both research and academia. His research interests span various domains, notably including LLM fine-tuning, artificial neural networks for biomedical signal processing, and context-awareness in the clinical domain using machine learning techniques. Throughout his career, he has contributed significantly to cutting-edge projects such as Smartcare in Kindergarten and neptuNE, addressing critical issues like child behavior monitoring and home healthcare. Sangyeop’s expertise extends to teaching and mentoring, evident from his engagements as a lecturer and teaching assistant at Yonsei University. His dedication to advancing technology and solving real-world problems underscores his commitment to innovation in the fields of data science and healthcare.

Professional Profile

Orcid

 

Affiliation:

Sangyeop is currently affiliated with the LEAD technology task at the Life Data Fusion Laboratory within the B2B Advanced Technology Center at LG Electronics, located in Seocho R&D Campus, Seoul, Republic of Korea.

Research Interests:

His research interests include LLM fine-tuning, artificial neural networks for biomedical signal processing, and context-awareness using machine learning techniques in clinical settings.

Teaching Experience:

Sangyeop has contributed to education as a lecturer and teaching assistant at Yonsei University, covering subjects like AI for Medical Problems and Engineering Information Processing, where he taught Python practice.

Projects:

  1. Smartcare in Kindergarten: Collaborated with DNX Kidsnote and Severance Hospital to utilize AI technology in studying children’s behavior and location in kindergartens using wearables/radars.
  2. neptuNE: Developed sensors and mobile devices for home monitoring, addressing nocturnal enuresis in children, in collaboration with Samsung Electronics and Severance Hospital.
  3. Ready-Made Implant: Conducted a confidential study on mass production with pre-made implants and recommending customized implant models through dental data analysis, in collaboration with Ostem Implant and Yonsei University.

Publications:

Sangyeop has several publications in prestigious conferences and journals, including IEEE Radar Conference and Sensors, focusing on topics like artificial intelligence, biomedical engineering, and healthcare.

Application:

Sangyeop has contributed to the development of in-home monitoring with wearables and NE Diary Application, enhancing healthcare solutions through technology.

Sangyeop’s dedication to advancing data-driven solutions in healthcare underscores his commitment to innovation and improving patient outcomes. 🌟

Publications Notes:πŸ“„

Wearable-Based Integrated System for In-Home Monitoring and Analysis of Nocturnal Enuresis

Continuous body impedance measurement to detect bladder volume changes during urodynamic study: A prospective study in pediatric patients

 

 

 

Fengshou Gu | Signal Processing Award | Best Researcher Award

Prof Dr. Fengshou Gu | Signal Processing Award | Best Researcher Award

Professor at University of Huddersfield – The Institute of Railway Research (IRR) – Huddersfield, United Kingdom

Professor Fengshou Gu is a highly accomplished researcher and academic with a distinguished career in the field of condition monitoring and diagnostics. With over 30 years of experience, he has made significant contributions to developing advanced monitoring and diagnostic techniques, numerical simulation methods, and signal processing techniques. His research has focused on various areas, including machine modeling, fault diagnosis, energy harvesting, and wireless sensor networks. Professor Gu’s work has been published in numerous prestigious journals, and he has presented his research at international conferences. He has also supervised over 100 PhD students and examined many more worldwide. Overall, Professor Gu’s expertise, innovative research, and dedication to advancing the field of condition monitoring and diagnostics make him a highly respected figure in the academic and research community.

Professional Profile

Education:

Professor Fengshou Gu’s academic journey began at Taiyuan University of Technology in Shanxi, China, where he earned his Bachelor of Science (B.S.) in Mechanical Engineering, graduating in September 1979. He continued his studies at the same institution, completing his Master of Science (M.Sc.) in the Mechanical Department from January 1981 to March 1985. Professor Gu pursued his doctoral studies at the University of Manchester, United Kingdom, where he obtained his Doctorate (Dr.) from the School of Mechanical Engineering from August 2004 to September 2008.

Work Experiences:

Professor Fengshou Gu has accumulated a wealth of experience throughout his career, starting with his tenure as a Lecturer in Vibration and Acoustics at Taiyuan University of Technology, China, from January 1985 to June 1991. Following this, he served as a Research Engineer at the University of Manchester, U.K., from July 1991 to October 1996. His role evolved to Senior Research Engineer at the same institution, where he continued his impactful work until September 2007. Since then, Professor Gu has held the positions of Principal Research Fellow, Professor, Head of MDARG (Machine Diagnostics, Dynamics, and Artificial Intelligence Research Group), and Deputy Director of CEPE (Centre of Excellence for Precision Engineering), solidifying his reputation as a leading expert in condition monitoring and diagnostics.

Skills:

Professor Fengshou Gu possesses a diverse range of skills that have been instrumental in his research and academic endeavors. He is proficient in numerical analysis, particularly in the context of friction stir welding, as evidenced by his review publications in this area. His expertise also extends to predictive modeling for biodiesel properties and their impact on engine performance, highlighting his strong background in engineering analysis and modeling. Additionally, Professor Gu has a deep understanding of machine condition monitoring, demonstrated by his work on energy harvesting technologies for self-powered wireless sensor networks and his research on diesel engine combustion characteristics. His skills also encompass signal processing techniques, including acoustic measurements and independent component analysis for fault diagnosis in mechanical equipment. Professor Gu’s proficiency in thermal imaging enhancement and modal analysis further underlines his expertise in machinery fault diagnosis. Overall, his skills in numerical analysis, predictive modeling, condition monitoring, and signal processing have contributed significantly to his impactful research contributions.

Achievements:

Professor Fengshou Gu has achieved numerous milestones in the field of condition monitoring and diagnostics, showcasing his exceptional expertise and innovative contributions. He has developed groundbreaking techniques such as single-channel Blind Source Separation (BSS) for acoustic source separation and the MSB-SE nonlinear modulation analysis theory, which have significantly advanced the field. His pioneering work on On-Rotor Sensing (ORS) based dynamic measurement and analysis theory has revolutionized dynamic measurement approaches. Professor Gu’s research has also led to the establishment of vibro-acoustic models (AAC, FAS) for tribological systems and diagnostic approaches, enhancing the understanding and diagnosis of complex machinery. Additionally, he has made significant contributions to online Operational Modal Analysis (OMA) with his Correlation Signal Cluster-based Stochastic Subspace Identification (CSC-SSI) method, applicable to both linear and nonlinear systems. Professor Gu’s innovative work extends to the development of instantaneous electric signature analysis for motor-driven system monitoring, nonlinear dynamic-based energy harvesting concepts, and thermal energy-based self-powered wireless sensor networks, showcasing his commitment to advancing sustainable and efficient monitoring technologies. His research on the nonlinear temperature field distribution of infrared thermal images for machine condition and performance monitoring has further demonstrated his pioneering approach to condition monitoring. Furthermore, Professor Gu has developed remote modal identification techniques based on photogrammetry analysis, highlighting his multidisciplinary and innovative research efforts.

Publications:

A review of numerical analysis of friction stir welding

Authors: X He, F Gu, A Ball

Citations: 542

Year: 2014

Prediction models for density and viscosity of biodiesel and their effects on fuel supply system in CI engines

Authors: B Tesfa, R Mishra, F Gu, N Powles

Citations: 278

Year: 2010

The measurement of instantaneous angular speed

Authors: Y Li, F Gu, G Harris, A Ball, N Bennett, K Travis

Citations: 230

Year: 2005

Energy harvesting technologies for achieving self-powered wireless sensor networks in machine condition monitoring: A review

Authors: X Tang, X Wang, R Cattley, F Gu, AD Ball

Citations: 216

Year: 2018

Detecting the crankshaft torsional vibration of diesel engines for combustion related diagnosis

Authors: P Charles, JK Sinha, F Gu, L Lidstone, AD Ball

Citations: 205

Year: 2009

A review on online state of charge and state of health estimation for lithium-ion batteries in electric vehicles

Authors: Z Wang, G Feng, D Zhen, F Gu, A Ball

Citations: 197

Year: 2021

Numerical simulation and experimental study of a two-stage reciprocating compressor for condition monitoring

Authors: M Elhaj, F Gu, AD Ball, A Albarbar, M Al-Qattan, A Naid

Citations: 196

Year: 2008

Combustion and performance characteristics of CI (compression ignition) engine running with biodiesel

Authors: B Tesfa, R Mishra, C Zhang, F Gu, AD Ball

Citations: 185

Year: 2013

Water injection effects on the performance and emission characteristics of a CI engine operating with biodiesel

Authors: B Tesfa, R Mishra, F Gu, AD Ball

Citations: 185

Year: 2012

A study of the noise from diesel engines using the independent component analysis

Authors: W Li, F Gu, AD Ball, AYT Leung, CE Phipps

Citations: 183

Year: 2001