IEEE SPS-DSI Webinar: 17 February 2022, by Dr. Alexander Jung
Many important application domains generate distributed collections of heterogeneous local datasets. These local datasets are related via an intrinsic network structure that arises from domain-specific notions of similarity between local datasets. Networked federated learning aims at learning a tailored local model for each local dataset.
SPS Webinar: 24 February 2022, by Dr. Samet Akcay - Recent Advances of Deep Learning within X-ray Security Imaging
X-ray security screening is widely utilized in aviation and transportation, and its importance has sparked interest in automated screening systems. The goal of this webinar is to explore computerized X-ray security imaging methods by classifying them into traditional machine learning and modern deep learning applications.
SPS Webinar: 26 January 2022, by Dr. Ba-Ngu Vo - Bayesian Multi-object Tracking: Probability Hypothesis Density Filter and Beyond
In his seminal paper, Dr. Ronald Mahler not only developed the Probability Hypothesis Density (PHD) filter, but also detailed the Random Finite Set (RFS) framework for multi-object systems. These complex dynamical systems, in which the number of objects and their states are unknown and vary randomly with time, have a wide range of applications from surveillance, computer vision, robotics to biomedical research.
SPS Webinar, 20 December 2021: Infinite-Dimensional Expansion for Sound Field Estimation with Application to Spatial Audio
Sound field estimation using a microphone array is a fundamental problem in acoustic signal processing, which has a wide variety of applications, such as visualization/auralization of an acoustic field, spatial audio reproduction using a loudspeaker array or headphones, and active noise cancellation in a spatial region.
SPS Webinar: 10 December 2021: Image Fusion with Convolutional Sparse Representation
As a popular signal modeling technique, sparse representation (SR) has achieved great success in image fusion during the last decade. However, due to the patch-based manner adopted in standard SR models, most existing SR-based image fusion methods suffer from two drawbacks, namely, limited ability in detail preservation and high sensitivity to mis-registration, while these two issues are of great concern in image fusion.
Review of the SPS Educational Webinars as of 2021
This article lists all of the 2021 and 2020 SPS Educational webinars that have been conducted and have been made available on the SPS Resource Center.
The IEEE DataPort Data Competition Contest is Now Open
Data Competitions are a great way to engage the global technical community to provide insight and analysis on your research data. IEEE DataPort is holding its inaugural Data Competition contest. As part of the contest, IEEE DataPort will select three Data Competitions to sponsor, providing $5000 in cash prizes for the winners of the three selected Data Competitions.
SPS Webinar, 29 October 2021: Empirical Wavelets
Adaptive (i.e., data-driven) methods have become very popular these last decades. Among the existing techniques, the empirical mode decomposition has proven to be very efficient in extracting accurate time-frequency information from non-stationary signals.
SPS Webinar, 14 September 2021: Case Studies of Deep Learning for Channel Decoding and Power Control
This webinar will demonstrate how deep learning can solve difficult communication problems that prior approaches often fail with two case studies. The first half will discuss a novel iterative BP-CNN architecture for channel decoding under correlated noise. This architecture concatenates a trained convolutional neural network (CNN) with a standard belief-propagation (BP) decoder.
SPS Webinar, 2 August 2021: Learning a Convolutional Neural Network for Image Compact-Resolution
We study the dual problem of image super-resolution (SR), which we term image compact-resolution (CR). Opposite to image SR that hallucinates a visually plausible high-resolution image given a low-resolution input, image CR provides a low-resolution version of a high-resolution image, such that the low-resolution version is both visually pleasing and as informative as possible compared to the high-resolution image.

