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Automatic target detection in cluttered IR images

机译:在杂乱的红外图像中自动进行目标检测

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Abstract: Automatic target detection (ATR) generally refers to the localization of potential targets by computer processing of data from a variety of sensors. Automatic detection is applicable for data reduction purposes in the reconnaissance domain and is therefore aimed at reducing the workload on human operators. ATR covers activities such as the localization of individual objects in large areas or volumes for assessing the battlefield simulation. An increase of reliability and efficiency of the overall reconnaissance process is expected. The results of automatic image evaluation are offered to the image analyst as hypotheses. In this paper cluttered images from an infrared sensor are analyzed with the aim of finding Regions of Interest (ROIs), where hints for man-made objects have to be found. This analysis uses collateral data from acquisition time and location (e.g. day time, weather condition, resolution, sensor specification and orientation etc.). The assumed target size in the image is also compared by using collateral data. Based on the collateral data, the algorithm adjusts its parameters in order to find ROIs and to detect targets. Low contrast conditions can be successfully tackled if the directions of the grey value gradient are considered, which are nearly independent of the contrast. Blobs are generated by applying adaptive thresholds in the ROIs. Here the evaluation of histograms is very important for the extraction of structured features. The height, aspect angle, and camera parameters are approximately known for an estimation of target sizes in the image domain out of the collateral data.!4
机译:摘要:自动目标检测(ATR)通常是指通过计算机处理来自各种传感器的数据来对潜在目标进行定位。自动检测适用于侦察领域中的数据减少目的,因此旨在减少操作人员的工作量。 ATR涵盖各种活动,例如在大面积或大体积中定位单个对象,以评估战场模拟。预计整个侦察过程的可靠性和效率将会提高。自动图像评估的结果作为假设提供给图像分析人员。在本文中,分析了来自红外传感器的杂波图像,目的是找到感兴趣的区域(ROI),在这些区域中必须找到人造物体的提示。该分析使用来自采集时间和位置的附属数据(例如白天,天气状况,分辨率,传感器规格和方向等)。图像中假定的目标大小也通过使用附带数据进行比较。基于附带数据,该算法会调整其参数,以便找到ROI并检测目标。如果考虑灰度值梯度的方向,而该方向几乎与对比度无关,则可以成功解决低对比度条件。通过在ROI中应用自适应阈值来生成斑点。在此,直方图的评估对于提取结构化特征非常重要。高度,宽高比角度和相机参数是已知的,用于从附带数据中估计图像域中的目标大小。4

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