| |||||||||||||
IEEE COINS 2021 : AI ML Big Data Vision Track | Artificial Intelligence | Machine Learning | Deep Learning | Machine Vision | Big Data Analytics | Video Analytics | |||||||||||||
Link: https://coinsconf.com/ | |||||||||||||
| |||||||||||||
Call For Papers | |||||||||||||
The Artificial Intelligence, Machine Learning, and Advanced Analytics track of IEEE COINS 2021 encourages original and high-quality submissions related to one or more of the following topics (but not limited to):
A) Artificial intelligent and Machine learning Fundamentals: Machine learning, artificial intelligence, and predictive analytics: analysis, modeling, simulation, and application in different domains Platforms, architecture, and infrastructure for efficient data analytics Data, Text, Stream, Process & Network Mining Times Series Models Bayesian Learning Ensemble Learning Transfer Learning Reinforcement Learning RNN, CNN & GAN Markov-Chain & Monte-Carlo-Simulation Datasets and Evaluation Adaptive Systems Generalization as search Ontologies and Knowledge sharing Brain-inspired representations learning Business Intelligence and Data Mining techniques Intelligent algorithms for Fog and cloud-based Internet of Things Natural Language Processing Image processing and Video Analytics B) Big Data Analytics and Data Science: Data, Text, Stream, Process & Network Mining Big Data Analytics AdoptionBenefits of Big Data Analytics Barriers to Big Data Analytics Volume Growth of Analytic Big Data Managing Analytic Big Data Data Types for Big Data Data Engineering Techniques Collaborative Edge-Fog-Cloud Machine Learning Techniques Role of Hadoop ecosystem in data analytics and Business Intelligence (BI) Analysis data for visualization Scalar visualization techniques Framework for flow visualization System aspects of visualization applications Future trends in scientific visualization C) Image Processing and Video Analytics: 3D computer vision Action and behavior recognition Biometrics, face, gesture, body pose Image retrieval Motion and tracking Neural generative models, autoencoders, GANs Recognition (object detection, categorization) Representation learning, deep learning Scene analysis, and understanding Segmentation, grouping, and shape Transfer, low-shot, semi- and unsupervised learning Video analysis and understanding: Vision + language, vision + other modalities Vision applications and systems, vision for robotics and autonomous vehicles Visual reasoning and logical representation D) Speech Recognition and Understanding: Automatic speech recognition Spoken language understanding Speech-to-text systems Spoken dialog systems Multilingual language processing Robustness in automatic speech recognition Spoken document retrieval Speech-to-speech translation Text-to-speech systems Spontaneous speech processing Speech summarization New applications of automatic speech recognition |
|