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Automatic Target Tracking in FLIR Image Sequences

机译:FLIR图像序列中的自动目标跟踪

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摘要

Moving target tracking is a challenging task and is increasingly becoming important for various applications. In this paper, we have presented target detection and tracking algorithm based on target intensity feature relative to surrounding background, and shape information of target. Proposed automatic target tracking algorithm includes two techniques: intensity variation function (IVF) and template modeling (TM). The intensity variation function is formulated by using target intensity feature while template modeling is based on target shape information. The IVF technique produces the maximum peak value whereas the reference target intensity variation is similar to the candidate target intensity variation. When IVF technique fails, due to background clutter, non-target object or other artifacts, the second technique, template modeling, is triggered by control module. By evaluating the outputs from the IVF and TM techniques, the tracker determines the real coordinates of the target. Performance of the proposed ATT is tested using real life forward-looking infrared (FLIR) image sequences taken from an airborne, moving platform.
机译:运动目标跟踪是一项具有挑战性的任务,并且对于各种应用程序而言越来越重要。在本文中,我们提出了一种基于目标相对于周围背景的强度特征以及目标形状信息的目标检测和跟踪算法。提出的自动目标跟踪算法包括两种技术:强度变化函数(IVF)和模板建模(TM)。通过使用目标强度特征来制定强度变化函数,而模板建模则基于目标形状信息。 IVF技术产生最大峰值,而参考目标强度变化与候选目标强度变化相似。当IVF技术失败时,由于背景混乱,非目标对象或其他伪影,控制模块会触发第二种技术,即模板建模。通过评估IVF和TM技术的输出,跟踪器可以确定目标的真实坐标。建议的ATT的性能是使用从机载移动平台上拍摄的现实生活中的前瞻性红外(FLIR)图像序列进行测试的。

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