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首页> 外文期刊>IEEE Transactions on Pattern Analysis and Machine Intelligence >Tracking by Affine Kernel Transformations Using Color and Boundary Cues
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Tracking by Affine Kernel Transformations Using Color and Boundary Cues

机译:使用颜色和边界提示通过仿射内核变换进行跟踪

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摘要

Kernel-based trackers aggregate image features within the support of a kernel (a mask) regardless of their spatial structure. These trackers spatially fit the kernel (usually in location and in scale) such that a function of the aggregate is optimized. We propose a kernel-based visual tracker that exploits the constancy of color and the presence of color edges along the target boundary. The tracker estimates the best affinity of a spatially aligned pair of kernels, one of which is color-related and the other of which is object boundary-related. In a sense, this work extends previous kernel-based trackers by incorporating the object boundary cue into the tracking process and by allowing the kernels to be affinely transformed instead of only translated and isotropically scaled. These two extensions make for more precise target localization. A more accurately localized target also facilitates safer updating of its reference color model, further enhancing the tracker's robustness. The improved tracking is demonstrated for several challenging image sequences.
机译:基于内核的跟踪器会在内核(掩码)的支持下聚合图像特征,而不管其空间结构如何。这些跟踪器在空间上适合内核(通常在位置和比例上),以便优化集合的功能。我们提出了一种基于内核的视觉跟踪器,该跟踪器利用了颜色的恒定性和沿目标边界的颜色边缘的存在。跟踪器估计一对空间对齐的内核的最佳亲和力,其中一个与颜色相关,另一个与对象边界相关。从某种意义上说,这项工作通过将对象边界提示纳入跟踪过程并允许对内核进行仿射变换而不是仅进行平移和各向同性缩放来扩展以前的基于内核的跟踪器。这两个扩展使目标定位更加精确。定位更准确的目标还有助于更安全地更新其参考颜色模型,从而进一步增强跟踪器的鲁棒性。对于几种具有挑战性的图像序列,改进了跟踪功能。

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