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Optimized swimmer tracking system by a dynamic fusion of correlation and color histogram techniques

机译:通过动态融合相关性和颜色直方图技术来优化游泳者跟踪系统

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To design a robust swimmer tracking system, we took into account two well-known tracking techniques: the nonlinear joint transform correlation (NL-JTC) and the color histogram. The two techniques perform comparably well, yet they both have substantial limitations. Interestingly, they also seem to show some complementarity. The correlation technique yields accurate detection but is sensitive to rotation, scale and contour deformation, whereas the color histogram technique is robust for rotation and contour deformation but shows low accuracy and is highly sensitive to luminosity and confusing background colors. These observations suggested the possibility of a dynamic fusion of the correlation plane and the color scores map. Before this fusion, two steps are required. First is the extraction of a sub-plane of correlation that describes the similarity between the reference and target images. This sub-plane has the same size as the color scores map but they have different interval values. Thus, the second step is required which is the normalization of the planes in the same interval so they can be fused. In order to determine the benefits of this fusion technique, first, we tested it on a synthetic image containing different forms with different colors. We thus were able to optimize the correlation plane and color histogram techniques before applying our fusion technique to real videos of swimmers in international competitions. Last, a comparative study of the dynamic fusion technique and the two classical techniques was carried out to demonstrate the efficacy of the proposed technique. The criteria of comparison were the tracking percentage, the peak to correlation energy (PCE), which evaluated the sharpness of the peak (accuracy), and the local standard deviation (Local-STD), which assessed the noise in the planes (robustness). (c) 2015 Elsevier B.V. All rights reserved.
机译:为了设计一个健壮的游泳者跟踪系统,我们考虑了两种众所周知的跟踪技术:非线性联合变换相关性(NL-JTC)和颜色直方图。两种技术的性能相当好,但是它们都有很大的局限性。有趣的是,它们似乎也显示出一些互补性。相关技术可产生准确的检测结果,但对旋转,缩放和轮廓变形敏感,而颜色直方图技术对于旋转和轮廓变形具有鲁棒性,但显示的准确性较低,并且对亮度和混乱的背景色高度敏感。这些观察结果暗示了动态融合相关平面和颜色分数图的可能性。在此融合之前,需要两个步骤。首先是提取描述参考图像和目标图像之间相似度的相关子平面。该子平面的大小与色标图相同,但是它们的间隔值不同。因此,需要第二步,即以相同间隔对平面进行归一化,以便可以将它们融合。为了确定此融合技术的优势,首先,我们在包含不同形式和不同颜色的合成图像上对其进行了测试。因此,在将我们的融合技术应用于国际比赛中真实游泳者的视频之前,我们能够优化相关平面和颜色直方图技术。最后,对动态融合技术和两种经典技术进行了比较研究,以证明所提出技术的有效性。比较的标准是跟踪百分比,峰对相关能量(PCE)(用于评估峰的锐度(准确性))和局部标准偏差(Local-STD),用于评估平面中的噪声(鲁棒性) 。 (c)2015 Elsevier B.V.保留所有权利。

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