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Appearance Sharing for Collective Human Pose Estimation

机译:集体人类姿态估算的外观共享

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While human pose estimation (HPE) techniques usually process each test image independently, in real applications images come in collections containing interdependent images. Often several images have similar backgrounds or show persons wearing similar clothing (foreground). We present a novel human pose estimation technique to exploit these dependencies by sharing appearance models between images. Our technique automatically determines which images in the collection should share appearance. We extend the state-of-the art HPE model of Yang and Ramanan to include our novel appearance sharing cues and demonstrate on the highly challenging Leeds Sports Poses dataset that they lead to better results than traditional single-image pose estimation.
机译:虽然人类的姿势估计(HPE)技术通常独立处理每个测试图像,但在真实应用中,图像来自包含相互依存图像的集合。通常有几个图像具有类似的背景或展示穿着类似衣物(前景)的人。我们提出了一种新颖的人类姿势估计技术,通过在图像之间共享外观模型来利用这些依赖性。我们的技术自动确定集合中的图像应共享外观。我们扩展了阳和振荡的最先进的HPE模型,包括我们的新颖外观共享线索,并展示高度挑战的利兹体育姿势,它们导致比传统的单一图像姿势估计更好的结果。

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