This dissertation presents a parallel pipelined computational model for radar signal processing applications. Performance results for the design and implementation of a real Space-Time Adaptive Processing (STAP) application on parallel computers are presented. The dissertation also discusses the process of software development for such an application on parallel computers when latency and throughput are both considered together and presents tradeoffs considered with respect to inter and intra-task communication and data redistribution. The results show that not only scalable performance was achieved for individual component tasks of STAP but linear speedups were obtained for the integrated task performance, both for latency as well as throu...
We present a performance-based methodology for designing a high-bandwidth radar application on commo...
xx, 169 leavesIn this thesis, we investigate the computational complexity, realization requirements ...
Real-time signal processing often requires high computational performance from the signal processing...
Performance results are presented for the design and implementation of parallel pipelined space-time...
Space-time adaptive processing (STAP) refers to a class of methods for detecting targets using an ar...
The development of radar systems on general-purpose off-the-shelf parallel hardware represents an ef...
AbstractÐSpace-time adaptive processing (STAP) refers to a class of methods for detecting targets us...
■ This article examines the suitability of the Mesh synchronous processor (MeshSP) architecture for ...
Space–time adaptive processing (STAP) is a well-known technique in the area of air borne surveillanc...
Network based parallel computing using personal computers is currently a popular choice for concurre...
Space-Time Adaptive Processing (STAP) enables very high performance radar processing but comes at a ...
Space-Time Adaptive Processing (STAP) has been widely used in modern radar systems such as Ground Mo...
We assess the state-of-the-art technology in massively parallel processors (MPPs) and their variatio...
Les traitements spatio-temporels adaptatifs (STAP) sont des traitements qui exploitent conjointement...
International audienceGeneral-purpose shared memory multicore architectures are becoming widely avai...
We present a performance-based methodology for designing a high-bandwidth radar application on commo...
xx, 169 leavesIn this thesis, we investigate the computational complexity, realization requirements ...
Real-time signal processing often requires high computational performance from the signal processing...
Performance results are presented for the design and implementation of parallel pipelined space-time...
Space-time adaptive processing (STAP) refers to a class of methods for detecting targets using an ar...
The development of radar systems on general-purpose off-the-shelf parallel hardware represents an ef...
AbstractÐSpace-time adaptive processing (STAP) refers to a class of methods for detecting targets us...
■ This article examines the suitability of the Mesh synchronous processor (MeshSP) architecture for ...
Space–time adaptive processing (STAP) is a well-known technique in the area of air borne surveillanc...
Network based parallel computing using personal computers is currently a popular choice for concurre...
Space-Time Adaptive Processing (STAP) enables very high performance radar processing but comes at a ...
Space-Time Adaptive Processing (STAP) has been widely used in modern radar systems such as Ground Mo...
We assess the state-of-the-art technology in massively parallel processors (MPPs) and their variatio...
Les traitements spatio-temporels adaptatifs (STAP) sont des traitements qui exploitent conjointement...
International audienceGeneral-purpose shared memory multicore architectures are becoming widely avai...
We present a performance-based methodology for designing a high-bandwidth radar application on commo...
xx, 169 leavesIn this thesis, we investigate the computational complexity, realization requirements ...
Real-time signal processing often requires high computational performance from the signal processing...