基于跟踪识别的关节式人体运动分析

Patrick Peursum, S. Venkatesh, G. West
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引用次数: 57

摘要

本文研究了利用高维(29D)人体模型对人体进行全三维无标记跟踪的问题。该领域的大多数工作都集中在实现准确的跟踪,以取代基于标记的运动捕捉,但这样做的代价是依赖相对清洁的观察条件。本文采用了不同的视角,提出了一种明确设计用于处理现实世界条件的身体跟踪模型,例如场景物体遮挡、故障恢复、长期跟踪、自动初始化、推广到不同的人以及与动作识别的集成。为了实现这些目标,一个动作的运动用层次隐马尔可夫模型的一种变体来建模。通过与退火粒子滤波的比较、跟踪不同的人以及降低分辨率和帧率的跟踪,对该模型进行了定量评价。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tracking-as-Recognition for Articulated Full-Body Human Motion Analysis
This paper addresses the problem of markerless tracking of a human in full 3D with a high-dimensional (29D) body model. Most work in this area has been focused on achieving accurate tracking in order to replace marker-based motion capture, but do so at the cost of relying on relatively clean observing conditions. This paper takes a different perspective, proposing a body-tracking model that is explicitly designed to handle real-world conditions such as occlusions by scene objects, failure recovery, long-term tracking, auto-initialisation, generalisation to different people and integration with action recognition. To achieve these goals, an action's motions are modelled with a variant of the hierarchical hidden Markov model. The model is quantitatively evaluated with several tests, including comparison to the annealed particle filter, tracking different people and tracking with a reduced resolution and frame rate.
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