首页> 外文会议>IEEE Applied Imagery and Pattern Recognition Workshop >An Image Metric-Based ATR Performance Prediction Testbed
【24h】

An Image Metric-Based ATR Performance Prediction Testbed

机译:基于图像度量的ATR性能预测测试

获取原文

摘要

Automatic target detection (ATD) systems process imagery to detect and locate targets in imagery in support of a variety of military missions. Accurate prediction of ATD performance would assist in system design and trade stud-ies, collection management, and mission planning. A need exists for ATD performance prediction based exclusively on information available from the imagery and its associated metadata. We present a predictor based on image measures quantifying the intrinsic ATD difficulty on an image. The modeling effort consists of two phases: a learn-ing phase, where image measures are computed for a set of test images, the ATD performance is measured, and a prediction model is developed; and a second phase to test and validate performance prediction. The learning phase produces a mapping, valid across various ATR algorithms, which is even applicable when no image truth is avail-able (e.g., when evaluating denied area imagery). The testbed has plug-in capability to allow rapid evaluation of new ATR algorithms. The image measures employed in the model include: statistics derived from a constant false alarm rate (CFAR) processor, the Power Spectrum Signature, and others. We present a performance predictor using a trained classifier ATD that was constructed using GENIE, a tool developed at Los Alamos National Laboratory. The paper concludes with a discussion of future research
机译:自动目标检测(ATD)系统进程图像以检测和定位图像中的目标,以支持各种军事任务。准确预测ATD性能将有助于系统设计和交易坐标,收集管理和任务规划。需要仅基于从图像和相关元数据可获得的信息的ATD性能预测。我们基于量化图像测量来介绍一种预测指标,量化图像上的内在ATD难度。建模工作包括两个阶段:学习阶段,其中计算用于一组测试图像的图像测量,测量ATD性能,开发了预测模型;和第二阶段测试和验证性能预测。学习阶段产生映射,跨各种ATR算法有效,甚至适用于当没有图像真相(例如,在评估被拒绝的区域图像时)。该测试平台具有插件能力,可允许快速评估新的ATR算法。模型中采用的图像措施包括:统计源自恒定的误报率(CFAR)处理器,功率谱签名等。我们使用在Los Alamos National实验室开发的工具构建的训练有素的分类器ATD提供了一种性能预测指标。本文讨论了未来研究的讨论

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