首页> 外文会议>Infrared Sensors: Detectors, Electronics, and Signal Processing >Matched-filter algorithm for subpixel spectral detection in hyperspectral image data
【24h】

Matched-filter algorithm for subpixel spectral detection in hyperspectral image data

机译:用于高光谱图像数据中亚像素光谱检测的匹配滤波器算法

获取原文
获取原文并翻译 | 示例

摘要

Abstract: Hyperspectral imagery, spatial imagery with associated wavelength data for every pixel, offers a significant potential for improved detection and identification of certain classes of targets. The ability to make spectral identifications of objects which only partially fill a single pixel (due to range or small size) is of considerable interest. Multiband imagery such as Landsat's 5 and 7 band imagery has demonstrated significant utility in the past. Hyperspectral imaging systems with hundreds of spectral bands offer improved performance. To explore the application of different sub pixel spectral detection algorithms a synthesized set of hyperspectral image data (hypercubes) was generated utilizing NASA earth resources and other spectral data. The data was modified using LOWTRAN 7 to model the illumination, atmospheric contributions, attenuations and viewing geometry to represent a nadir view from 10,000 ft. altitude. The base hypercube (HC) represented 16 by 21 spatial pixels with 101 wavelength samples from 0.5 to 2.5 micrometers for each pixel. Insertions were made into the base data to provide random location, random pixel percentage, and random material. Fifteen different hypercubes were generated for blind testing of candidate algorithms. An algorithm utilizing a matched filter in the spectral dimension proved surprisingly good yielding 100% detections for pixels filled greater than 40% with a standard camouflage paint, and a 50% probability of detection for pixels filled 20% with the paint, with no false alarms. The false alarm rate as a function of the number of spectral bands in the range from 101 to 12 bands was measured and found to increase from zero to 50% illustrating the value of a large number of spectral bands. This test was on imagery without system noise; the next step is to incorporate typical system noise sources.!16
机译:摘要:高光谱图像(具有每个像素相关波长数据的空间图像)为改进检测和识别某些类别的目标提供了巨大的潜力。对仅部分填充单个像素(由于范围或尺寸小)的物体进行光谱识别的能力引起了极大的兴趣。诸如Landsat的5和7波段图像之类的多波段图像在过去已显示出巨大的实用性。具有数百个光谱带的高光谱成像系统可提供更高的性能。为了探索不同子像素光谱检测算法的应用,利用NASA地球资源和其他光谱数据生成了一组合成的高光谱图像数据(超立方体)。使用LOWTRAN 7修改了数据,以对照明,大气贡献,衰减和观察几何模型进行建模,以表示从10,000英尺高度的最低点视图。基本超立方体(HC)代表16个21个空间像素,每个像素的101个波长样本为0.5到2.5微米。插入到基础数据中以提供随机位置,随机像素百分比和随机材料。生成了十五种不同的超立方体,用于候选算法的盲测试。在频谱维度上使用匹配滤波器的算法被证明具有令人惊讶的良好性能,对于使用标准迷彩涂料填充的像素大于40%的像素,可以100%进行检测,对于使用涂料填充20%的像素,像素的检测概率为50%,没有误报。测量了误报率,该误报率是在101到12个波段范围内的光谱带数量的函数,发现虚假率从零增加到50%,说明了许多光谱带的值。该测试是在没有系统噪音的图像上进行的;下一步是合并典型的系统噪声源。!16

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