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Real-time Detection of Small and Dim Moving Objects in IR Video Sequences Using a Robust Background Estimator and a Noise-adaptive Double Thresholding

机译:使用鲁棒的背景估计器和自适应噪声的双阈值实时检测红外视频序列中的小物体和昏暗物体

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We developed an algorithm for automatically detecting small and poorly contrasted (dim) moving objects in real-time, within video sequences acquired through a steady infrared camera. The algorithm is suitable for different situations since it is independent of the background characteristics and of changes in illumination. Unlike other solutions, small objects of any size (up to single-pixel), either hotter or colder than the background, can be successfully detected. The algorithm is based on accurately estimating the background at the pixel level and then rejecting it. A novel approach permits background estimation to be robust to changes in the scene illumination and to noise, and not to be biased by the transit of moving objects. Care was taken in avoiding computationally costly procedures, in order to ensure the real-time performance even using low-cost hardware. The algorithm was tested on a dataset of 12 video sequences acquired in different conditions, providing promising results in terms of detection rate and false alarm rate, independently of background and objects characteristics. In addition, the detection map was produced frame by frame in real-time, using cheap commercial hardware. The algorithm is particularly suitable for applications in the fields of video-surveillance and computer vision. Its reliability and speed permit it to be used also in critical situations, like in search and rescue, defence and disaster monitoring.
机译:我们开发了一种算法,该算法可以在通过稳定的红外热像仪获取的视频序列中,实时自动自动检测小的和对比度较差的(暗淡的)运动物体。该算法适用于不同情况,因为它与背景特征和照明变化无关。与其他解决方案不同,可以成功检测到比背景温度高或低的任何大小的小物体(最大单像素)。该算法基于准确估算像素级别的背景,然后将其拒绝。一种新颖的方法可以使背景估计对场景照明的变化和噪声具有鲁棒性,并且不会因运动对象的移动而产生偏差。为了避免即使使用低成本硬件也能确保实时性能,在避免计算上昂贵的过程中采取了谨慎措施。该算法在不同条件下采集的12个视频序列的数据集上进行了测试,在检测率和误报率方面均提供了可喜的结果,而与背景和对象特征无关。另外,使用便宜的商业硬件实时地逐帧生成检测图。该算法特别适合于视频监控和计算机视觉领域的应用。它的可靠性和速度使其可以在紧急情况下使用,例如在搜救,防御和灾难监测中。

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