基于elm的机载实时分类高光谱图像处理器

Koldo Basterretxea, Unai Martinez-Corral, Raul Finker, I. D. Campo
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引用次数: 6

摘要

高光谱图像被广泛用于精确的目标检测和地形特征分类。现代成像光谱仪产生大量的数据,这些数据在机载上被压缩并下载到地面站进行处理。提高频谱分辨率和数据采集速率需要更有效的压缩技术来满足下行带宽的限制。减少数据传输瓶颈的另一种方法是处理机载高光谱图像信息。与此同时,实时机载处理将为携带高光谱相机的航天器和飞机提供在危急情况下的即时决策能力,从而扩大它们可以完成的任务范围。本文研究了极限学习机(elm)在高维数据分类中的应用,以及专用硬件和特定应用的处理器设计如何帮助生产高性能、轻量化和低功耗的机载高光谱图像处理系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ELM-based hyperspectral imagery processor for onboard real-time classification
Hyperspectral imagery is being widely used for accurate object detection and terrain feature classification. Modern imaging spectrometers produce huge amounts of data that are compressed onboard and downloaded to ground stations to be processed. Increasing spectral resolution and data acquisition rates demand more efficient compression techniques to meet downlink bandwidth restrictions. A different approach to reducing data-transfer bottlenecks consists of processing hyperspectral imagery information onboard. Real-time onboard processing would, at the same time, broaden the scope of missions that spacecrafts and aircrafts carrying hyperspectral cameras could fulfill by providing them with immediate decision-making capacity in critical circumstances. This paper investigates the use of Extreme Learning Machines (ELMs) for the classification of high dimensional data, and how specialized hardware and application-specific processor design can help to produce high performance, lightweight, and reduced power consumption systems for onboard hyperspectral imagery processing.
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