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Detection of unknown targets from aerial camera and extraction of simple object fingerprints for the purpose of target reacquisition

机译:从航空摄影机中检测未知目标并提取简单目标指纹以重新获得目标

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An aerial multiple camera tracking paradigm needs to not only spot unknown targets and track them, but also needs to know how to handle target reacquisition as well as target handoff to other cameras in the operating theater. Here we discuss such a system which is designed to spot unknown targets, track them, segment the useful features and then create a signature fingerprint for the object so that it can be reacquired or handed off to another camera. The tracking system spots unknown objects by subtracting background motion from observed motion allowing it to find targets in motion, even if the camera platform itself is moving. The area of motion is then matched to segmented regions returned by the EDISON mean shift segmentation tool. Whole segments which have common motion and which are contiguous to each other are grouped into a master object. Once master objects are formed, we have a tight bound on which to extract features for the purpose of forming a fingerprint. This is done using color and simple entropy features. These can be placed into a myriad of different fingerprints. To keep data transmission and storage size low for camera handoff of targets, we try several different simple techniques. These include Histogram, Spatiogram and Single Gaussian Model. These are tested by simulating a very large number of target losses in six videos over an interval of 1000 frames each from the DARPA VIVID video set. Since the fingerprints are very simple, they are not expected to be valid for long periods of time. As such, we test the shelf life of fingerprints. This is how long a fingerprint is good for when stored away between target appearances. Shelf life gives us a second metric of goodness and tells us if a fingerprint method has better accuracy over longer periods. In videos which contain multiple vehicle occlusions and vehicles of highly similar appearance we obtain a reacquisition rate for automobiles of over 80% using the simple single Gaussian model compared with the null hypothesis of <20%. Additionally, the performance for fingerprints stays well above the null hypothesis for as much as 800 frames. Thus, a simple and highly compact single Gaussian model is useful for target reacquisition. Since the model is agnostic to view point and object size, it is expected to perform as well on a test of target handoff. Since some of the performance degradation is due to problems with the initial target acquisition and tracking, the simple Gaussian model may perform even better with an improved initial acquisition technique. Also, since the model makes no assumption about the object to be tracked, it should be possible to use it to fingerprint a multitude of objects, not just cars. Further accuracy may be obtained by creating manifolds of objects from multiple samples.
机译:空中多摄像机跟踪范例不仅需要识别未知目标并对其进行跟踪,还需要知道如何处理目标重获以及如何将目标移交给手术室中的其他摄像机。在这里,我们讨论这样一种系统,该系统旨在发现未知目标,对其进行跟踪,对有用特征进行分割,然后为该目标创建签名指纹,以便可以重新获取该目标指纹或将其移交给其他摄像机。跟踪系统通过从观察到的运动中减去背景运动来发现未知物体,即使相机平台本身正在移动,它也可以找到运动中的目标。然后将运动区域与EDISON均值偏移分割工具返回的分割区域匹配。具有共同运动且彼此相邻的整个段被分组为一个主对象。形成主对象后,我们就可以紧密地提取特征以形成指纹。这是使用颜色和简单的熵功能完成的。这些可以放入无数不同的指纹中。为了将数据传输和存储大小保持在较低水平,以实现目标相机的切换,我们尝试了几种不同的简单技术。这些包括直方图,Spatogram和单高斯模型。通过模拟来自DARPA VIVID视频集的每隔1000帧的六个视频中的大量目标损耗,对这些损耗进行了测试。由于指纹非常简单,因此预计它们不会长时间有效。因此,我们测试了指纹的保质期。这是在目标外观之间存储指纹时对指纹有益的时间。保质期为我们提供了第二个优度指标,并告诉我们指纹方法在更长的时间内是否具有更好的准确性。在包含多个车辆遮挡物和外观非常相似的车辆的视频中,使用简单的单高斯模型,相对于<20%的原假设,我们获得了80%以上的汽车重获率。此外,指纹的性能在多达800帧的情况下仍远高于零假设。因此,简单且高度紧凑的单个高斯模型可用于目标重获。由于该模型与视点和对象大小无关,因此可以预期在目标切换测试中也能执行。由于某些性能下降是由于初始目标获取和跟踪的问题而引起的,因此,简单的高斯模型在采用改进的初始获取技术时可能会表现得更好。同样,由于模型不对要跟踪的对象做出任何假设,因此应该有可能使用它来指纹多个对象,而不仅仅是汽车。通过从多个样本创建对象的流形图可以获得更高的精度。

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