IEEE Transactions on Signal Processing

Scope

The IEEE Transactions on Signal Processing (TSP) covers novel theory, algorithms, performance analyses and applications of techniques for the processing, understanding, learning, retrieval, mining, and extraction of information from signals. The term "signal" includes, among others, audio, video, speech, image, communication, geophysical, sonar, radar, medical and musical signals. Examples of topics of interest include, but are not limited to, information processing and the theory and application of filtering, coding, transmitting, estimating, detecting, analyzing, recognizing, synthesizing, recording, and reproducing signals.

The scope is reflected in the EDICS: the Editors` Information Classification Scheme.
The Transactions publish original, timely and significant contributions. Submissions must be previously unpublished and may not be under considerations elsewhere. Technical papers are submitted via Manuscript Central (see Author`s Instructions). Please consider the journal with the most appropriate scope for your submission.

Abstracts and indexing

The Transactions is listed in AMS MathSciNet (Mathematical Reviews Database), Current Contents (Engineering, Computing & Technology, Electronics & Telecommunications Collection), CompuMath citation index, EI Compendex, IEE INSPEC, ISI Science Citation Index, ISI SciSearch, Scitation Research Alerts, PubMed, Medline.

Reproducible research

The Transactions encourages authors to make their publications reproducible by making all information needed to reproduce the presented results available online. This typically requires publishing the code and data used to produce the publication`s figures and tables on a website; see the supplemental materials section of the information for authors. It gives other researchers easier access to the work, and facilitates fair comparisons.

Multimedia content

It is now possible to submit for review and publish in Xplore supporting multimedia material such as speech samples, images, movies, matlab code etc. A multimedia graphical abstract can also be displayed along with the traditional text. More information is available under Multimedia Materials at the IEEE Author Center.


TSP Volume 73 | 2025

Reliable Robust Adaptive Steganographic Coding Based on Nested Polar Codes

Steganography is the art of covert communication that pursues the secrecy of concealment. In adaptive steganography, the most commonly used framework of steganography, the sender embeds a "secret message" signal within another "cover" signal with respect to a certain adaptive distortion function that measures the distortion incurred, contributing to the composite "stego" signal that resembles the cover, and the receiver extracts the "secret message" signal from the stego.

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Wideband Sensor Resource Allocation for Extended Target Tracking and Classification

Communication base stations can achieve high-precision tracking and accurate classification for multiple extended targets in the context of integrated communication and sensing by transmitting wideband signal. However, the time resources of the base stations are often limited. In the time-division operation mode, part of the time resources must be reserved to guarantee communication performance, while the rest of the resources must be properly allocated for better multi-target sensing performance.

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Byzantine-Robust and Communication-Efficient Personalized Federated Learning

This paper explores constrained non-convex personalized federated learning (PFL), in which a group of workers train local models and a global model, under the coordination of a server. To address the challenges of efficient information exchange and robustness against the so-called Byzantine workers, we propose a projected stochastic gradient descent algorithm for PFL that simultaneously ensures Byzantine-robustness and communication efficiency.

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TSP Volume 72 | 2024

Coordinating Multiple Intelligent Reflecting Surfaces Without Channel Information

Conventional beamforming methods for intelligent reflecting surfaces (IRSs) or reconfigurable intelligent surfaces (RISs) typically entail the full channel state information (CSI). However, the computational cost of channel acquisition soars exponentially with the number of IRSs. To bypass this difficulty, we propose a novel strategy called blind beamforming that coordinates multiple IRSs by means of statistics without knowing CSI.

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