Prof. Qirong Mao | Smart Agriculture | Best Researcher Award
Prof. Qirong Mao | Smart Agriculture – Dean at Jiangsu University, China
Prof. Qirong Mao is a distinguished researcher and a full professor in the Department of Computer Science at Jiangsu University, specializing in artificial intelligence, multimedia, and human-computer interaction. His work has revolutionized the fields of speech emotion recognition, facial expression analysis, and deep learning. Throughout his career, Prof. Mao has been instrumental in developing advanced algorithms and neural network architectures, such as convolutional neural networks (CNNs) and transformers, to improve human-centered AI technologies. He has published extensively in highly respected journals and conferences, making significant contributions to both theoretical and applied aspects of his field.
Profile:
Scopus | Google Scholar
Education:
Prof. Mao completed his Bachelor’s, Master’s, and Ph.D. degrees in Computer Science and Engineering, with a focus on artificial intelligence and multimedia processing, at leading institutions. His strong academic foundation set the stage for his groundbreaking research in emotion recognition systems and intelligent algorithms. Prof. Mao’s education equipped him with a deep understanding of computational methodologies, which he has since expanded through years of hands-on research and innovation in his field.
Experience:
Prof. Mao has accumulated decades of academic and industrial experience. He began his career at Jiangsu University, where he has grown to become a full professor. In his tenure, he has led numerous research projects and worked with top-tier scientists, focusing on real-world applications of AI and multimedia signal processing. Prof. Mao’s expertise has been sought by various prestigious conferences and journals, where he frequently serves as a reviewer and committee member. His leadership in several funded projects has helped advance technologies in areas such as speech emotion recognition, facial expression analysis, and affective computing. His collaborative efforts with industry partners demonstrate his ability to bridge the gap between academia and real-world applications.
Research Interests:
Prof. Mao’s research interests are at the intersection of artificial intelligence, machine learning, and multimedia systems. Specifically, he focuses on speech emotion recognition, facial expression recognition, multimodal emotion detection, and deep learning models for human-centered computing. His work involves the application of advanced neural networks, such as convolutional neural networks (CNNs) and transformers, to analyze human emotions from speech and facial cues. Prof. Mao is also deeply involved in cross-disciplinary research that aims to improve human-computer interaction and is a pioneer in the development of domain adaptation techniques for emotion recognition in diverse environments.
Awards:
Prof. Mao’s contributions to the field of artificial intelligence and multimedia processing have earned him numerous accolades. He has been recognized for his groundbreaking work in speech and facial expression recognition, with his research being widely cited across the academic community. His most notable achievements include his key publications, such as the 2014 paper on learning salient features for speech emotion recognition, which garnered over 707 citations. In addition to his publication success, Prof. Mao has received multiple research grants and funding awards for his innovative projects in AI and emotion recognition.
Publications:
Prof. Mao’s research has been widely published in top-tier journals and conference proceedings. Here are some of his key publications:
-
“Learning salient features for speech emotion recognition using convolutional neural networks” (IEEE Transactions on Multimedia, 2014)
-
Cited by: 707
-
📚 Focus: Developed CNN-based models for emotion recognition from speech.
-
-
“Speech emotion recognition using CNN” (ACM International Conference on Multimedia, 2014)
-
Cited by: 452
-
📚 Focus: Focused on CNN techniques for recognizing emotions from speech.
-
-
“Dual-path transformer network: Direct context-aware modeling for end-to-end monaural speech separation” (arXiv preprint, 2020)
-
Cited by: 360
-
📚 Focus: Introduced dual-path transformer networks for speech separation tasks.
-
-
“Joint pose and expression modeling for facial expression recognition” (IEEE Conference on Computer Vision and Pattern Recognition, 2018)
-
Cited by: 307
-
📚 Focus: Proposed a joint modeling approach for facial expression and pose.
-
-
“A neural-AdaBoost based facial expression recognition system” (Expert Systems with Applications, 2014)
-
Cited by: 195
-
📚 Focus: Combined neural networks and AdaBoost for facial expression recognition.
-
-
“Geometry guided pose-invariant facial expression recognition” (IEEE Transactions on Image Processing, 2020)
-
Cited by: 132
-
📚 Focus: Addressed pose-invariant challenges in facial expression recognition.
-
-
“Feature refinement: An expression-specific feature learning and fusion method for micro-expression recognition” (Pattern Recognition, 2022)
-
Cited by: 105
-
📚 Focus: Focused on refining features for improved micro-expression recognition.
-
Conclusion:
Prof. Qirong Mao is a highly deserving candidate for the Best Researcher Award due to his groundbreaking research and lasting impact on the fields of AI, emotion recognition, and multimedia signal processing. His innovative approaches using CNNs, transformers, and other deep learning models have set new standards in speech and facial emotion recognition, making him a thought leader in the AI community. With a strong record of high-impact publications, an impressive citation count, and recognition from his peers, Prof. Mao’s research not only advances academic knowledge but also holds immense potential for real-world applications. His contributions to the development of human-computer interaction systems and emotion-aware technologies position him as a leader in the AI space, making him an excellent nominee for this prestigious award.