Moving target detection in infrared imagery using a regularized CDWT optical flow

G. Castellano, J. Boyce, M. Sandler
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引用次数: 6

Abstract

A modified version of the CDWT optical flow algorithm developed by Magarey et al. is applied to the problem of moving target detection in noisy infrared image sequences. The optical flow algorithm is a hierarchical, phase-based approach. The modified version includes an explicit regularization of the motion field, which is of fundamental importance for the application in question. The data used consists of infrared imagery where pixel-size targets move in strongly cluttered backgrounds. To detect the targets different frames from the sequence are compared by subtraction of one from another. However, the motion of the sensor generates an apparent motion of the background across frames, and, as a consequence, the differences between background regions dominate the residue images. To avoid this effect, the estimated motion field between the frames is used to register the background spatially, so that only objects corresponding to potential targets appear in the residue images. Results of applying the method on 3 infrared image sequences are presented, which show that the target SNR is higher when the estimated motion field for the whole scene is explicitly regularized.
基于正则化CDWT光流的红外图像运动目标检测
将Magarey等人开发的CDWT光流算法的改进版本应用于有噪声红外图像序列中的运动目标检测问题。光流算法是一种分层的、基于相位的方法。修改后的版本包括运动场的显式正则化,这对所讨论的应用至关重要。使用的数据包括红外图像,其中像素大小的目标在强烈杂乱的背景中移动。为了检测目标,将序列中的不同帧通过相减来进行比较。然而,传感器的运动产生了背景跨帧的明显运动,因此,背景区域之间的差异支配了残留图像。为了避免这种影响,利用估计的帧间运动场对背景进行空间配准,使残差图像中只出现潜在目标对应的物体。将该方法应用于3幅红外图像序列,结果表明,对整个场景的运动场估计进行显式正则化后,目标信噪比更高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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