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Top-Down Human Pose Estimation with Depth Images and Domain Adaptation

机译:用深度图像和域适应自上而下的人类姿态估计

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In this paper, a method for estimation of human pose is proposed, making use of ToF (Time of Flight) cameras. For this, a YOLO based object detection method was used, to develop a top-down method. In the first stage, a network was developed to detect people in the image. In the second stage, a network was developed to estimate the joints of each person, using the image result from the first stage. We show that a deep learning network trained from scratch with ToF images yields better results than taking a deep neural network pretrained on RGB data and retraining it with ToF data. We also show that a top-down detector, with a person detector and a joint detector works better than detecting the body joints over the entire image.
机译:在本文中,提出了一种估计人姿势的方法,利用TOF(飞行时间)摄像机。为此,使用基于YOLO基于的物体检测方法,以开发自上而下的方法。在第一阶段,开发了一个网络以检测图像中的人。在第二阶段,使用来自第一阶段的图像结果来开发网络以估计每个人的关节。我们表明,从TOF图像划痕训练的深度学习网络产生的结果比采用RGB数据上的深度神经网络,并用TOF数据再次再培训它。我们还表明,具有人检测器和接头检测器的自上而下的探测器比在整个图像上检测到身体接头更好地工作。

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