空间无损自适应可伸缩高光谱数据压缩的硬件实现

N. Aranki, D. Keymeulen, A. Bakhshi, M. Klimesh
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引用次数: 22

摘要

有效的机载无损高光谱数据压缩减少了数据量,以满足NASA和DoD有限的下行能力。该技术还通过在受限的下行链路资源上提供精确的重构数据,提高了特征提取、目标识别和特征分类能力。喷气推进实验室最近开发了一种新的、自适应的、预测的高光谱数据无损压缩技术。该技术使用自适应滤波方法,实现了低复杂度和压缩效率的结合,远远超过了目前使用的最先进的技术。jpl开发的“快速无损”算法不需要关于固定仪器动态范围的光谱带性质的训练数据或其他特定信息。它具有较低的计算复杂度,因此非常适合在硬件上实现。它被修改为推进式仪器,使其适用于飞行实现。该算法的压缩器(和减压器)的原型在软件中可用,但这种实现可能无法满足某些空间应用的速度和实时性要求。与软件实现相比,硬件加速提供了10 -100倍的性能改进(在Pentium IV机器上大约1M个样本/秒)。本文描述了在现场可编程门阵列(FPGA)上对推扫帚仪器的“改进快速无损”压缩算法的硬件实现。FPGA实现针对当前最先进的FPGA (Xilinx Virtex IV和V系列),每个时钟周期压缩一个样本,为空间应用提供快速实用的实时解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hardware Implementation of Lossless Adaptive and Scalable Hyperspectral Data Compression for Space
Efficient on-board lossless hyperspectral data compression reduces data volume in order to meet NASA and DoD limited downlink capabilities. The technique also improves signature extraction, object recognition and feature classification capabilities by providing exact reconstructed data on constrained downlink resources. At JPL a novel, adaptive and predictive technique for lossless compression of hyperspectral data was recently developed. This technique uses an adaptive filtering method and achieves a combination of low complexity and compression effectiveness that far exceeds state-of-the-art techniques currently in use. The JPL-developed ‘Fast Lossless’ algorithm requires no training data or other specific information about the nature of the spectral bands for a fixed instrument dynamic range. It is of low computational complexity and thus well-suited for implementation in hardware. It was modified for pushbroom instruments and makes it practical for flight implementations. A prototype of the compressor (and decompressor) of the algorithm is available in software, but this implementation may not meet speed and real-time requirements of some space applications. Hardware acceleration provides performance improvements of 10x-100x vs. the software implementation (about 1M samples/sec on a Pentium IV machine). This paper describes a hardware implementation of the ‘Modified Fast Lossless’ compression algorithm for pushbroom instruments on a Field Programmable Gate Array (FPGA). The FPGA implementation targets the current state-of-the-art FPGAs (Xilinx Virtex IV and V families) and compresses one sample every clock cycle to provide a fast and practical real-time solution for Space applications.
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