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Hand Pose Estimation in Depth Image using CNN and Random Forest

机译:使用CNN和随机森林的深度图像中的手部姿势估计

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Thanks to the availability of low cost depth cameras, like Microsoft Kinect, 3D hand pose estimation attracted special research attention in these years. Due to the large variations in hand's viewpoint and the high dimension of hand motion, 3D hand pose estimation is still challenging. In this paper we propose a two-stage framework which joint with CNN and Random Forest to boost the performance of hand pose estimation. First, we use a standard Convolutional Neural Network (CNN) to regress the hand joints' locations. Second, using a Random Forest to refine the joints from the first stage. In the second stage, we propose a pyramid feature which merges the information flow of the CNN. Specifically, we get the rough joints' location from first stage, then rotate the convolutional feature maps (and image). After this, for each joint, we map its location to each feature map (and image) firstly, then crop features at each feature map (and image) around its location, put extracted features to Random Forest to refine at last. Experimentally, we evaluate our proposed method on ICVL dataset and get the mean error about 1 lmm, our method is also real-time on a desktop.
机译:得益于Microsoft Kinect等低成本深度相机的出现,近年来3D手势估计引起了特别的研究关注。由于手的视点变化很大,并且手部动作尺寸较大,因此3D手势估计仍具有挑战性。在本文中,我们提出了一个由CNN和Random Forest联合组成的两阶段框架,以提高手部姿势估计的性能。首先,我们使用标准的卷积神经网络(CNN)回归手部关节的位置。第二,从第一阶段开始,使用随机森林细化关节。在第二阶段,我们提出一个金字塔特征,该特征合并了CNN的信息流。具体来说,我们从第一阶段获得粗糙关节的位置,然后旋转卷积特征图(和图像)。之后,对于每个关节,我们首先将其位置映射到每个特征图(和图像),然后在其位置周围的每个特征图(和图像)上裁剪特征,最后将提取的特征放到Random Forest中进行细化。通过实验,我们在ICVL数据集上评估了我们提出的方法,并获得了约1 lmm的平均误差,该方法在台式机上也是实时的。

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