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We are inviting applications for a Speech and Deep Learning Researcher to work with Prof Thomas Hain and Dr Anton Ragni at The University of Sheffield and ZOO Digital PLC, an innovative international media localisation company with its research and development centre in Sheffield.
Lecture Date: September 15, 2021 -- Virtual Lecture
Chapter: Meghnad Saha Institute of Technology IEEE SPS Student Branch Chapter
Chapter Chair: Biswarup Ganguly
Topic: Graph signal processing: spectral transforms, graph Slepians, non-parametric
surrogate data generation, modularity-based graph signal processing
Lecture Date: June 29, 2021 -- Virtual Lecture
Chapter: Meghnad Saha Institute of Technology IEEE SPS Student Branch Chapter
Chapter Chair: Biswarup Ganguly
Topic: Computational Imaging for Art investigation and for Neuroscience
Manuscript Due: January 15, 2022
Publication Date: 3rd Quarter 2022
CFP Document
Benefiting from the powerful discriminative feature learning capability of convolutional neural networks (CNNs), deep learning techniques have achieved remarkable performance improvement for the task of salient object detection (SOD) in recent years.
While current research on multimedia is essentially dealing with the information derived from our observations of the world, internal activities inside human brains, such as imaginations and memories of past events etc., could become a brand new concept of multimedia, for which we coin as “brain-media”.
Optimal rank selection is an important issue in tensor decomposition problems, especially for Tensor Train (TT) and Tensor Ring (TR) (also known as Tensor Chain) decompositions. In this paper, a new rank selection method for TR decomposition has been proposed for automatically finding near-optimal TR ranks, which result in a lower storage cost, especially for tensors with inexact TT or TR structures.