首页> 外文期刊>Journal of Modern Optics >An object detection strategy for uncooled infrared imagery
【24h】

An object detection strategy for uncooled infrared imagery

机译:未冷却红外图像的目标检测策略

获取原文
获取原文并翻译 | 示例
           

摘要

An overall strategy for the very difficult problem of object detection using uncooled infrared (UCIR) sensors is discussed. The UCIR sensors are based on micro-bolometer technology and thus differ significantly from cooled infrared sensors that employ photon-counting detectors. As such, UCIR imagery tends to be very low contrast, since the sensor operates over a broad spectral band; and blurry, because of the long integration times. Ideally, the UCIR imagery would be preprocesed using an appropriate image reconstruction/restoration algorithm. if the sources of image degradation are understood and lend themselves to accurate modelling, the image reconstruction can be solved as an inverse problem. Most often this is not the case and the problem is solved using minimization approaches, such as blind deconvolution. Because image reconstruction/restoration approaches tend to be very throughput intensive, they are rarely performed in a tactical environment. More typically, a detection algorithm is applied directly to the UCIR imagery. In this paper, Local Singular Value Decomposition (LSVD) is evaluated for anomaly detection. LSVD uses local statistics to identify anomalous regions and is very good at identifying local texture differences; it appears to work quite well on UCIR imagery. Target detection results are presented for a simulated data set.
机译:讨论了使用非冷却红外(UCIR)传感器进行物体检测这一非常困难的问题的总体策略。 UCIR传感器基于微辐射热计技术,因此与采用光子计数检测器的冷却红外传感器有很大不同。因此,UCIR图像的对比度往往很低,因为传感器在很宽的光谱带上工作;和模糊,因为集成时间长。理想情况下,将使用适当的图像重建/恢复算法对UCIR图像进行预处理。如果了解图像质量下降的根源并有助于进行精确建模,则可以将图像重建作为一个反问题来解决。通常不是这种情况,可以使用最小化方法(例如盲反卷积)解决问题。由于图像重建/恢复方法往往需要大量的吞吐量,因此很少在战术环境中执行。更典型地,将检测算法直接应用于UCIR图像。在本文中,对局部奇异值分解(LSVD)进行了评估,以进行异常检测。 LSVD使用局部统计信息来识别异常区域,并且非常擅长识别局部纹理差异。在UCIR图像上看起来效果很好。给出了针对模拟数据集的目标检测结果。

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