首页> 外文会议>SPIE Conference on Radar Sensor Technology >Real-Time Imaging Implementation of the Army Research LaboratorySynchronous Impulse Reconstruction Radar on a Graphics ProcessingUnit Architecture
【24h】

Real-Time Imaging Implementation of the Army Research LaboratorySynchronous Impulse Reconstruction Radar on a Graphics ProcessingUnit Architecture

机译:陆军研究实验室同步脉冲重建雷达的实时成像实施

获取原文

摘要

High computing requirements for the synchronous impulse reconstruction (SIRE) radar algorithm present a challenge for near real-time processing, particularly the calculations involved in output image formation. Forming an image requires a large number of parallel and independent floating-point computations. To reduce the processing time and exploit the abundant parallelism of image processing, a graphics processing unit (GPU) architecture is considered for the imaging algorithm. Widely available off the shelf, high-end GPUs offer inexpensive technology that exhibits great capacity of computing power in one card. To address the parallel nature of graphics processing, the GPU architecture is designed for high computational throughput realized through multiple computing resources to target data parallel applications. Due to a leveled or in some cases reduced clock frequency in mainstream single and multi-core general-purpose central processing units (CPUs), GPU computing is becoming a competitive option for compute-intensive radar imaging algorithm prototyping. We describe the translation and implementation of the SIRE radar backprojection image formation algorithm on a GPU platform. The programming model for GPU's parallel computing and hardware-specific memory optimizations are discussed in the paper. A considerable level of speedup is available from the GPU implementation resulting in processing at real-time acquisition speeds.
机译:同步脉冲重建(S​​IRE)雷达算法的高计算要求为近实时处理提出了挑战,特别是输出图像形成所涉及的计算。形成图像需要大量的并行和独立的浮点计算。为了减少处理时间并利用图像处理的丰富并行性,考虑了成像算法的图形处理单元(GPU)架构。广泛地提供搁板,高端GPU提供廉价的技术,呈现出一张卡片的大量计算能力。为了解决图形处理的并行性质,GPU架构专为通过多个计算资源实现的高计算吞吐量来定位数据并行应用。由于某些情况下或在某些情况下,主流单核通用中央处理单元(CPU)中的时钟频率降低,GPU计算正在成为计算密集型雷达成像算法原型的竞争选择。我们描述了在GPU平台上的SIRE雷达反投影图像形成算法的翻译和实现。本文讨论了GPU并行计算和硬件特定内存优化的编程模型。 GPU实现可从GPU实现中获得相当大的加速度,从而在实时采集速度下处理。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号