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IEEE Big Data - MMAI 2025 : IEEE Big Data 2025 Workshop on Multimodal AI | |||||||||||||||
Link: https://sites.google.com/view/mmai2025/home | |||||||||||||||
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Call For Papers | |||||||||||||||
Multimodal data presents a more comprehensive and natural form of information representation and communication in the real world. Our digital world is multimodal, combining different modalities of data such as text, audio, images, videos, animations, drawings, depth, 3D, biometrics, interactive content, etc. Multimodal data analytics algorithms often outperform single modal data analytics in many real-world problems.
Big Data technology has emerged as a key driver of the new industrial revolution. With the rapid advancement of Big Data technologies and their wide-ranging applications across various sectors, recent research has increasingly focused on multimodal data analysis. In this context, the integration of multimodal AI-driven Big Data has become a highly relevant and timely area of study. This workshop aims to generate momentum around this topic of growing interest, and to encourage interdisciplinary interaction and collaboration between Natural Language Processing (NLP), computer vision, signal processing, machine learning, robotics, Human-Computer Interaction (HCI), bioinformatics, healthcare, and geospatial computing communities. It serves as a forum to bring together active researchers and practitioners from academia and industry to share their recent advances in this promising area. ________________________________________ Topics This is an open call for papers, which solicits original contributions considering recent findings in theory, methodologies, and applications in the field of multimodal AI and Big Data. The list of topics includes, but not limited to: Multimodal representations (language, vision, audio, touch, depth, etc.) Multimodal data modeling Multimodal data fusion Multimodal learning cross-modal learning Multimodal big data analytics and visualization Multimodal scene understanding Multimodal perception and interaction Multimodal information tracking, retrieval and identification Multimodal big data infrastructure and management Multimodal benchmark datasets and evaluations Multimodal AI in robotics (robotic vision, NLP in robotics, Human-Robot Interaction (HRI), etc.) Multimodal object detection, classification, recognition, and segmentation Multimodal AI safety (explainability, interpretability, trustworthiness, etc.) Multimodal Biometrics Multimodal applications (autonomous driving, cybersecurity, smart cities, intelligent transportation systems, industrial inspection, medical diagnosis, healthcare, social media, arts, etc.) ________________________________________ Important Dates Please visit the workshop website: https://sites.google.com/view/mmai2025/home ________________________________________ Submission Please follow the web link to submit to IEEE Big Data paper submission site. Accepted papers will be published in the IEEE Big Data proceedings. ________________________________________ Multimodal AI Google Group Welcome to subscribe to the Multimodal AI Google group (https://groups.google.com/g/multimodal-ai). |
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