首页> 外文期刊>IEEE Transactions on Image Processing >Automatic target detection and recognition in multiband imagery: a unified ML detection and estimation approach
【24h】

Automatic target detection and recognition in multiband imagery: a unified ML detection and estimation approach

机译:多波段图像中的自动目标检测和识别:统一的ML检测和估计方法

获取原文
获取原文并翻译 | 示例
       

摘要

Multispectral or hyperspectral sensors can facilitate automatic target detection and recognition in clutter since natural clutter from vegetation is characterized by a grey body, and man-made objects, compared with blackbody radiators, emit radiation more strongly at some wavelengths. Various types of data fusion of the spectral-spatial features contained in multiband imagery developed for detecting and recognizing low-contrast targets in clutter appear to have a common framework. A generalized hypothesis test on the observed data is formulated by partitioning the received bands into two groups. In one group, targets exhibit substantial coloring in their signatures but behave either like grey bodies or emit negligible radiant energy in the other group. This general observation about the data generalizes the data models used previously. A unified framework for these problems, which utilizes a maximum likelihood ratio approach to detection, is presented. Within this framework, a performance evaluation and a comparison of the various types of multiband detectors are conducted by finding the gain of the SNR needed for detection as well as the gain required for separability between the target classes used for recognition. Certain multiband detectors become special cases in this framework. The incremental gains in SNR and separability obtained by using what are called target-feature bands plus clutter-reference bands are studied. Certain essential parameters are defined that effect the gains in SNR and target separability.
机译:多光谱或高光谱传感器可以帮助自动进行杂波中的目标检测和识别,因为来自植被的自然杂波的特征是灰白色,与黑体辐射器相比,人造物体在某些波长下会发出更强的辐射。为检测和识别杂波中的低对比度目标而开发的多波段图像中包含的光谱空间特征的各种类型的数据融合,似乎具有一个共同的框架。通过将接收到的频段分为两组来制定对观测数据的广义假设检验。在一组中,目标在其特征上表现出显着的颜色,但在另一组中,其行为类似于灰色物体或发出可忽略的辐射能。对数据的一般观察概括了先前使用的数据模型。提出了针对这些问题的统一框架,该框架利用最大似然比方法进行检测。在此框架内,通过查找检测所需的SNR增益以及用于识别的目标类别之间的可分离性所需的增益,可以进行各种类型的多频带检测器的性能评估和比较。某些多频带检测器在此框架中成为特殊情况。研究了通过使用所谓的目标特征频带和杂波参考频带获得的SNR和可分离性的增量增益。定义了一些必不可少的参数,这些参数会影响SNR和目标可分离性的增益。

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