A setup for evaluating detectors and descriptors for visual tracking

Steffen Gauglitz, Tobias Höllerer, P. Krahwinkler, J. Roßmann
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引用次数: 9

Abstract

In many cases, visual tracking is based on detecting, describing, and then matching local features. A variety of algorithms for these steps have been proposed and used in tracking systems, leading to an increased need for independent comparisons. However, existing evaluations are geared towards object recognition and image retrieval, and their results have limited validity for real-time visual tracking. We present a setup for evaluation of detectors and descriptors which is geared towards visual tracking in terms of testbed, candidate algorithms and performance criteria. Most notably, our testbed consists of video streams with several thousand frames naturally affected by noise and motion blur.
用于评估视觉跟踪的检测器和描述符的设置
在许多情况下,视觉跟踪是基于检测,描述,然后匹配局部特征。这些步骤的各种算法已被提出并用于跟踪系统,导致对独立比较的需求增加。然而,现有的评价主要面向目标识别和图像检索,其结果对实时视觉跟踪的有效性有限。我们提出了一种评估检测器和描述符的设置,该设置在试验台,候选算法和性能标准方面面向视觉跟踪。最值得注意的是,我们的测试平台由数千帧的视频流组成,这些视频流自然受到噪声和运动模糊的影响。
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