Phenomena clouds are characterized by nondeterministic, dynamic variations of shapes, sizes, direction, and speed of motion along multiple axes. The phenomena detection and tracking should not be limited to some traditional applications such as oil spills and gas clouds but also be utilized to more accurately observe other types of phenomena such as walking motion of people. This wider range of applications requires more reliable, in-situ techniques that can accurately adapt to the dynamics of phenomena. Unfortunately, existing works which only focus on simple and well-defined shapes of phenomena are no longer sufficient. In this article, we present a new class of applications together with several distributed algorithms to detect and track...
Abstract Real-world data streams pose a unique challenge to the implementation of machine learning ...
Summarization: Distributed event detection is the process of identifying specific occurrences of int...
We propose Cloud of Things for Sensing as a Service: a global architecture that scales up cloud comp...
Smart Dust is a set of a vast number of ultra-small fully autonomous computing and communication dev...
The number of Internet-of-Things (IoT) and edge devices has exploded in the last decade, providing n...
Smart Dust is a set of a vast number of ultra-small fully autonomous computing and communication dev...
A recurrent concern in cloud detection approaches is the high misclassification rate for pixels clos...
Recent advances in large scale data streaming technologies enabled the deployment of a huge number o...
The need for scalable and low-latency architectures that can process large amount of data from geogr...
Many meteorological phenomena occur at different locations simultaneously. These phenomena vary temp...
The paper presents theory, algorithms, measurements of experiments, and simulations for detecting ra...
Geographically co-located sensors tend to participate in the same environmental phenomena. Phenomeno...
In recent years, the introduction of Smart Grids has provided us with access to a new layer of energ...
Real-world data streams pose a unique challenge to the implementation of machine learning (ML) model...
This paper addresses issues concerned with design and managing of monitoring systems comprised of mo...
Abstract Real-world data streams pose a unique challenge to the implementation of machine learning ...
Summarization: Distributed event detection is the process of identifying specific occurrences of int...
We propose Cloud of Things for Sensing as a Service: a global architecture that scales up cloud comp...
Smart Dust is a set of a vast number of ultra-small fully autonomous computing and communication dev...
The number of Internet-of-Things (IoT) and edge devices has exploded in the last decade, providing n...
Smart Dust is a set of a vast number of ultra-small fully autonomous computing and communication dev...
A recurrent concern in cloud detection approaches is the high misclassification rate for pixels clos...
Recent advances in large scale data streaming technologies enabled the deployment of a huge number o...
The need for scalable and low-latency architectures that can process large amount of data from geogr...
Many meteorological phenomena occur at different locations simultaneously. These phenomena vary temp...
The paper presents theory, algorithms, measurements of experiments, and simulations for detecting ra...
Geographically co-located sensors tend to participate in the same environmental phenomena. Phenomeno...
In recent years, the introduction of Smart Grids has provided us with access to a new layer of energ...
Real-world data streams pose a unique challenge to the implementation of machine learning (ML) model...
This paper addresses issues concerned with design and managing of monitoring systems comprised of mo...
Abstract Real-world data streams pose a unique challenge to the implementation of machine learning ...
Summarization: Distributed event detection is the process of identifying specific occurrences of int...
We propose Cloud of Things for Sensing as a Service: a global architecture that scales up cloud comp...