The workshop will bring together engineers, students, practitioners, and researchers from the fields of machine learning (ML) and signal processing (SP). The aim of the workshop is to contribute to the cross-fertilization between the research on ML methods and their application to SP to initiate collaboration between these areas. ML usually plays an important role in the transition from data storage to decision systems based on large databases of signals such as the obtained from sensor networks, internet services, or communication systems. These systems imply developing both computational solutions and novel models. Signals from real-world systems are usually complex such as speech, music, bio-medical, multimedia, among others. Thus, SP techniques are very useful for these type of systems to automate processing and analysis techniques to retrieve information from data storage. Topics will range from foundations for real-world systems, and processing, such as speech, language analysis, biomedicine, convergence and complexity analysis, machine learning, social networks, sparse representations, visual analytics, robust statistical methods.
Learning theory
Cognitive information processing
Neural networks
Classification and pattern recognition
Nonlinear signal processing
Graphical models and kernel methods
Genomic signals and sequences
Multichannel adaptive signal processing
Kernel methods and graphical models
Sparsity-aware learning
Subspace/maniforld learning
Bayesian and distributed learning
Smart Grid, games, social networks
Computational Intelligence
Data-driven adaptive systems
Data-driven models
Multimodal data fusion
Multiset data analysis
Perceptual signal processing
Applications (biomedical signals, biometrix, bioinformatics)
11月08日
2017
11月10日
2017
初稿截稿日期
初稿录用通知日期
终稿截稿日期
注册截止日期
留言