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Tracking Objects From Satellite Videos: A Velocity Feature Based Correlation Filter

机译:跟踪卫星视频中的对象:基于速度特征的相关滤波器

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Satellite video target tracking is a new topic in the remote sensing field, which refers to tracking moving objects of interest from satellite video in real time. The target of interest usually occupies only a few pixels in a satellite video image, even when the train is long. Thus, satellite video target tracking still faces new challenges compared with traditional visual tracking, including the detection of low-resolution targets, features with less representation, and targets with an extremely similar background. Little research has been done on satellite video target tracking, and little is known about whether or not the existing tracking algorithms can still work on the satellite video data. This paper, for the first time, intensively investigated 13 typical trackers in traditional visual tracking. The experimental results suggest that most of the state-of-the-art tracking algorithms mainly rely on luminance, color features, or convolutional features, and they fail to track satellite video targets due to their inadequate representation features. To overcome this difficulty, we propose a velocity correlation filter (VCF) algorithm, which employs both a velocity feature and an inertia mechanism (IM) to construct a specific kernel correlation filter for the satellite video target tracking. The velocity feature has a high discriminative ability to detect moving targets in satellite videos, and the IM can prevent model drift adaptively. Experimental results on three real satellite video data sets show that the VCF outperforms state-of-the-art tracking methods with regard to precision and success plots while running at over 100 frames per second.
机译:卫星视频目标跟踪是遥感领域的一个新话题,它是指实时跟踪卫星视频中感兴趣的运动对象。即使火车很长,感兴趣的目标通常在卫星视频图像中也只占据几个像素。因此,与传统的视觉跟踪相比,卫星视频目标跟踪仍然面临着新的挑战,包括低分辨率目标的检测,代表性较小的特征以及背景极为相似的目标。关于卫星视频目标跟踪的研究很少,而关于现有跟踪算法是否仍然可以对卫星视频数据进行工作的了解很少。本文首次对传统视觉跟踪中的13种典型跟踪器进行了深入研究。实验结果表明,大多数最新的跟踪算法主要依赖于亮度,颜色特征或卷积特征,并且由于它们的表示特征不足而无法跟踪卫星视频目标。为了克服这个困难,我们提出了一种速度相关滤波器(VCF)算法,该算法同时利用速度特征和惯性机制(IM)来构造用于卫星视频目标跟踪的特定内核相关滤波器。速度功能具有很高的判别能力,可以检测卫星视频中的运动目标,并且IM可以自适应地防止模型漂移。在三个真实卫星视频数据集上的实验结果表明,VCF在以每秒100帧以上的速度运行时,在精度和成功图方面都优于最新的跟踪方法。

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