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DeepSegment: Segmentation of motion capture data using deep convolutional neural network

机译:深度:使用深卷积神经网络分割运动捕捉数据

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In this paper, we propose a novel framework to segment 3D human motion capture data into distinct behaviors. First, in preprocessing, we build a normalized pose space by eliminating translation and orientation from the 3D poses. We then transform these normalized 3D poses into 2D RGB images, and as a result, we simplify the task of motion segmentation as image classification and recognition. Furthermore, we identify the most significant joints of the skeleton that contribute substantially to executing a motion and get benefits from them by assigning them more weights. The weight allocation to the specific joint has been done purely based on its deviation capability. Finally, each motion is encoded into compact visual representation by exploiting RGB images with weighted joints. We adopt a transfer learning approach to extract a fixed-size feature vector using off-the-shelf deep Convolutional Neural Network (CNN), Alexnet, after fine-tuning. We develop a Kd-tree on these highly descriptive feature vectors to retrieve the nearest neighbors. Based on a similarity measure, we classify the motion segments and ultimately place the cuts on the ongoing motion sequences. We perform extensive experiments to evaluate our proposed approach on popular Motion Capture (MoCap) datasets, CMU and HDM05. Our approach almost outperforms all other state-of-the-art methods, and the results highlight the capabilities of our proposed scheme for effective segmentation.(c) 2021 Elsevier B.V. All rights reserved.
机译:在本文中,我们提出了一种新颖的框架,将3D人体运动捕获数据分成不同的行为。首先,在预处理中,我们通过消除3D姿势的转换和方向来构建归一化的姿势空间。然后,我们将这些归一化3D转换为2D RGB图像,因此,我们将运动分段的任务简化为图像分类和识别。此外,我们确定了骨骼最重要的关节,这些关节基本上贡献了执行运动并通过将它们分配更重量来获得它们的好处。特定关节的重量分配纯粹是基于其偏差能力来完成的。最后,通过利用加权关节的RGB图像来对每个运动进行编码为紧凑的视觉表示。我们采用转移学习方法使用在微调后,使用现成的深度卷积神经网络(CNN),亚历克特网,亚历纳特·亚历纳州的传输学习方法。我们在这些高度描述性的特征向量上开发一个KD树,以检索最近的邻居。基于相似性度量,我们将动作段分类并最终将切割放在正在进行的运动序列上。我们进行广泛的实验,以评估我们在流行的运动捕获(Mocap)数据集,CMU和HDM05上的提出方法。我们的方法几乎优于所有其他最先进的方法,结果突出了我们提出的有效细分计划的能力。(c)2021 Elsevier B.v.保留所有权利。

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