Efficient body part tracking using ridge data and data pruning

Yeonho Kim, Daijin Kim
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引用次数: 5

Abstract

This paper proposes a model-based human pose estimation from a sequence of monocular depth images using ridge data and data pruning. The proposed method uses the ridge data that is defined as the local maxima in the distance map because it estimates the human pose robustly and fast due to its selective representation of body skeletons. The proposed method performs four functional subtasks sequentially: (1) it segments human depth silhouettes from depth images by executing floor removal, object segmentation, human detection and human identification, (2) it extracts ridge data from each segmented human depth silhouette by finding the local maxima over the distance map, (3) it generates initial human model parameters such as the lengths between two neighboring joints, and (4) it estimates the human pose by tracking the body joints in a hierarchical order of head, torso, and limbs and pruning illegal ridge data based on the joint length constraints. In pose estimation experiments on the benchmark dataset, SMMC-10, the proposed method achieved 0.9671 mean Average Precision (mAP) and 280 frames per second (fps). The experimental results over the SMMC-10 dataset show that the proposed method estimates the human pose fast and tracks the body joints accurately under various self-occlusion and fast moving condition.
利用脊数据和数据修剪进行有效的身体部位跟踪
本文提出了一种基于模型的基于脊数据和数据修剪的单目深度图像的人体姿态估计方法。该方法使用距离图中定义为局部最大值的脊数据,由于其对人体骨骼的选择性表示,可以鲁棒地快速估计人体姿态。该方法依次执行四个功能子任务:(1)通过地板去除、目标分割、人体检测和人体识别等方法,从深度图像中分割出人体深度轮廓;(2)通过寻找距离图上的局部最大值,从每个分割的人体深度轮廓中提取脊线数据;(3)生成两个相邻关节之间的长度等初始人体模型参数;(4)通过跟踪头部、躯干、躯干、头部等人体关节的层次顺序来估计人体姿态。并且基于关节长度约束的四肢和非法脊修剪数据。在基准数据集SMMC-10的姿态估计实验中,该方法的平均精度(mAP)为0.9671,帧率为280帧/秒。在SMMC-10数据集上的实验结果表明,在各种自遮挡和快速运动条件下,该方法能够快速估计人体姿态,准确跟踪人体关节。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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