Results 201 to 210 of about 52,416 (269)
Some of the next articles are maybe not open access.

A Model Predictive Approach to Fault-Tolerant WASNs

2009 Fifth International Conference on Networking and Services, 2009
In Wireless Ad hoc Sensor Networks (WASNs), a crucial issue is to reduce power consumption while satisfying some key network properties. In this paper, we propose a fault-tolerant topology control that optimizes the lifetime of the network at a given degree k of connectivity by minimizing power consumption. Our topology control is fully distributed and
PAPALINI, Michele   +2 more
openaire   +2 more sources

If It Wasn???t Charted, It Was Done!

open access: closedNursing Management (Springhouse), 1991
JANINE FIESTA
openalex   +3 more sources

Performance analysis of MVDR beamformer in WASN with sampling rate offsets and blind synchronization

open access: closed2015 23rd European Signal Processing Conference (EUSIPCO), 2015
In wireless acoustic sensor networks (WASNs), sampling rate offsets (SROs) between nodes are inevitable, and recognized as one of the challenges that have to be resolved for a coherent array processing. A simplified free-space propagation is considered with a single desired source impinging a WASNs from the far-field and contaminated by a diffuse noise.
Dani Cherkassky   +2 more
openalex   +2 more sources

Lower-Complexity Multi-Layered Security Partitioning Algorithm Based on Chaos Mapping-DWT Transform for WA/SNs

J. Sens. Actuator Networks
The resource limitations of Low-Power Wireless Networks (LP-WNs), such as Wireless Sensor Networks (WSNs), Wireless Actuator/Sensor Networks (WA/SNs), and Internet of Things (IoT) outdoor applications, restrict the utilization of the error-performance ...
Tarek Srour   +5 more
semanticscholar   +1 more source

Diffusion-Based Distributed Multi-Frame Kalman Filtering With Speech Distortionless Constraint for Speech Enhancement

IEEE Transactions on Audio, Speech, and Language Processing
The widespread adoption and interconnection of intelligent devices equipped with microphones has further propelled the development of speech enhancement techniques in wireless acoustic sensor networks (WASNs).
Qingying Zhao   +3 more
semanticscholar   +1 more source

Catch Your Breath: Adaptive Computation for Self-Paced Sequence Production

arXiv.org
We explore a class of supervised training objectives that allow a language model to dynamically and autonomously scale the number of compute steps used for each input token.
Alexandre Galashov   +5 more
semanticscholar   +1 more source

Improved Topology-Independent Distributed Adaptive Node-Specific Signal Estimation for Wireless Acoustic Sensor Networks

European Signal Processing Conference
This paper addresses the challenge of topology-independent (TI) distributed adaptive node-specific signal estimation (DANSE) in wireless acoustic sensor networks (WASNs) where sensor nodes exchange only fused versions of their local signals. An algorithm
Paul Didier   +4 more
semanticscholar   +1 more source

As if Pain Wasn??t Bad Enough, How About Anxiety, Depression, and Anger, Too?

open access: closedThe Clinical Journal of Pain, 2005
Robert D. Kerns, Karl J. Maier
openalex   +2 more sources

Robust Self-Localization of Wireless Acoustic Sensor Networks

IEEE Internet of Things Journal
Wireless acoustic sensor networks (WASNs), or the so-called Internet of Audio Things (IoAuT), have attracted increasing attention in the Internet of Things community.
Xu Wang, De Hu, Rui Liu, Feilong Bao
semanticscholar   +1 more source

An Optimized Hybrid Approach for Reducing Computational Overheads and Evaluating Audio Signal Characteristics in Wireless Acoustic Sensor Networks

Statistics, Optimization & Information Computing
This paper presents a hybrid system designed to analyze multiple properties of audio signals while minimizing quality losses during transmission over Wireless Acoustic Sensor Networks (WASNs). The proposed system operates in two phases.
Utpal Ghosh   +5 more
semanticscholar   +1 more source

Home - About - Disclaimer - Privacy