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3d front-view human upper body pose estimation using single camera.

机译:使用单个摄像头的3d前视图人体上半身姿势估计。

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摘要

3D human pose estimation is an important field in Computer Vision. It has a wide range of applications, such as human-computer interaction, intelligent animation synthesis, video surveillance, etc. Single camera video, due to the lack of depth information, causes difficult challenges of estimating 3D human pose. This paper proposes a modified particle swarm optimization method combined with human motion prior knowledge in order to achieve a robust analysis-via-synthesis strategy. Due to the numerous applications of human upper body movements, we are focusing on creating a front-view human upper body model. Due to the high dimensional body configuration of human pose estimation, particle swarm optimization, with great global search ability, has a very slow convergence speed. Therefore, our modified algorithm uses annealing method so that the particles can converge faster to the lowest likelihood function value. This fact makes our algorithm more effective. Integrated use of several image features, such as silhouette, arm silhouette, ratio silhouette area, edge, motion and skin color, constructs our cost function. Each feature has its unique purpose in order to achieve much more accurate and robust pose estimation results. Constraining human body configuration, including the perspective scope of joint movements angle range constraints and non-penetrating constraints of limbs, is to make sure estimating human pose in the feasible region, preventing illegal pose data, and improve the accuracy of 3D human tracking. In addition, a trajectory feature is used to re-distribute particles for every frame tracking. Experiment results show that our modified algorithm combined with cost function provides a much more accurate and robust result than downhill simplex algorithm [1] and Annealing Particle Swarm Optimization Particle Filter [2].
机译:3D人体姿势估计是计算机视觉中的重要领域。它具有广泛的应用,例如人机交互,智能动画合成,视频监控等。由于缺乏深度信息,单摄像机视频给估计3D人体姿势带来了艰巨的挑战。提出了一种结合人类运动先验知识的改进粒子群优化方法,以实现一种鲁棒的综合分析策略。由于人体上半身运动的大量应用,我们致力于创建前视图人体上半身模型。由于人体姿态估计的高维身体结构,具有极大的全局搜索能力的粒子群算法收敛速度非常慢。因此,我们的改进算法使用退火方法,以使粒子可以更快地收敛到最低似然函数值。这个事实使我们的算法更加有效。多种图像功能的综合使用,例如轮廓,手臂轮廓,比例轮廓区域,边缘,运动和肤色,构成了我们的成本函数。每个功能都有其独特的目的,以便获得更加准确和可靠的姿势估计结果。约束人体构造,包括关节运动角度范围约束和四肢非穿透约束的透视范围,是为了确保估计可行区域中的人体姿态,防止非法姿态数据,并提高3D人体跟踪的准确性。另外,轨迹特征用于为每个帧跟踪重新分配粒子。实验结果表明,与下坡单纯形算法[1]和退火粒子群优化粒子滤波器[2]相比,我们的改进算法与成本函数的结合提供了更加准确和鲁棒的结果。

著录项

  • 作者

    Sun, Ruizhi.;

  • 作者单位

    University of Washington.;

  • 授予单位 University of Washington.;
  • 学科 Electrical engineering.
  • 学位 Masters
  • 年度 2013
  • 页码 88 p.
  • 总页数 88
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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