Wireless sensor networks are among the most promising technologies of the current era because of their small size, lower cost, and ease of deployment. With the increasing number of wireless sensors, the probability of generating missing data also rises. This incomplete data could lead to disastrous consequences if used for decision-making. There is rich literature dealing with this problem. However, most approaches show performance degradation when a sizable amount of data is lost. Inspired by the emerging field of graph signal processing, this paper performs a new study of a Sobolev reconstruction algorithm in wireless sensor networks. Experimental comparisons on several publicly available datasets demonstrate that the algorithm surpasses ...
Abstract—Data loss is ubiquitous in wireless sensor networks (WSNs) mainly due to the unreliable wir...
In sensor networks, due to power outage at a sensor node, hardware dysfunction, or bad environmental...
In applications such as social, energy, transportation, sensor, and neuronal networks, big data natu...
The reliable acquisition of monitoring information is critical for several industrial use cases rely...
Data streams from remote monitoring systems such as wireless sensor networks show immediately that t...
Affected by hardware and wireless conditions in WSNs, raw sensory data usually have notable data los...
This dissertation proposes a systematic approach, based on a probabilistic graphical model, to infer...
Copyright © 2015 Roberto Magán-Carrión et al.This is an open access article distributed under the ...
Wireless sensor networks attracted researchers for the unique challenges and the opportunities in si...
Abstract—Reconstructing the environment by sensory data is a fundamental operation for understanding...
For signal processing in sensor networks there is an on-going challenge for filling missing informat...
Consider a wireless sensor network with N sensor nodes measur-ing data which are correlated temporal...
Graph Signal Processing (GSP) is an emerging research field that extends the concepts of digital sig...
The main contribution of this paper is the implementation and experimental evaluation of a signal re...
Abstract—The main contribution of this paper is the imple-mentation and experimental evaluation of a...
Abstract—Data loss is ubiquitous in wireless sensor networks (WSNs) mainly due to the unreliable wir...
In sensor networks, due to power outage at a sensor node, hardware dysfunction, or bad environmental...
In applications such as social, energy, transportation, sensor, and neuronal networks, big data natu...
The reliable acquisition of monitoring information is critical for several industrial use cases rely...
Data streams from remote monitoring systems such as wireless sensor networks show immediately that t...
Affected by hardware and wireless conditions in WSNs, raw sensory data usually have notable data los...
This dissertation proposes a systematic approach, based on a probabilistic graphical model, to infer...
Copyright © 2015 Roberto Magán-Carrión et al.This is an open access article distributed under the ...
Wireless sensor networks attracted researchers for the unique challenges and the opportunities in si...
Abstract—Reconstructing the environment by sensory data is a fundamental operation for understanding...
For signal processing in sensor networks there is an on-going challenge for filling missing informat...
Consider a wireless sensor network with N sensor nodes measur-ing data which are correlated temporal...
Graph Signal Processing (GSP) is an emerging research field that extends the concepts of digital sig...
The main contribution of this paper is the implementation and experimental evaluation of a signal re...
Abstract—The main contribution of this paper is the imple-mentation and experimental evaluation of a...
Abstract—Data loss is ubiquitous in wireless sensor networks (WSNs) mainly due to the unreliable wir...
In sensor networks, due to power outage at a sensor node, hardware dysfunction, or bad environmental...
In applications such as social, energy, transportation, sensor, and neuronal networks, big data natu...