Der Sandor, Chan Alex, Nasrabadi Nasser, Kwon Heesung
US Army Research Laboratory, 2800 Powder Mill Road, Adelphi, Maryland 20783-1197, USA.
Appl Opt. 2004 Jan 10;43(2):333-48. doi: 10.1364/ao.43.000333.
We describe an algorithm for the detection and clutter rejection of military vehicles in forward-looking infrared (FLIR) imagery. The detection algorithm is designed to be a prescreener that selects regions for further analysis and uses a spatial anomaly approach that looks for target-sized regions of the image that differ in texture, brightness, edge strength, or other spatial characteristics. The features are linearly combined to form a confidence image that is thresholded to find likely target locations. The clutter rejection portion uses target-specific information extracted from training samples to reduce the false alarms of the detector. The outputs of the clutter rejecter and detector are combined by a higher-level evidence integrator to improve performance over simple concatenation of the detector and clutter rejecter. The algorithm has been applied to a large number of FLIR imagery sets, and some of these results are presented here.
我们描述了一种用于在前视红外(FLIR)图像中检测和杂波抑制军事车辆的算法。该检测算法设计为一个预筛选器,用于选择区域进行进一步分析,并使用空间异常方法,该方法寻找图像中在纹理、亮度、边缘强度或其他空间特征方面不同的目标大小区域。这些特征被线性组合以形成一个置信度图像,该图像经过阈值处理以找到可能的目标位置。杂波抑制部分使用从训练样本中提取的特定目标信息来减少检测器的误报。杂波抑制器和检测器的输出由一个高级证据整合器进行组合,以提高性能,优于简单地将检测器和杂波抑制器串联。该算法已应用于大量FLIR图像集,此处展示了其中一些结果。