自动检测和计数运动视频分类

C. Panagiotakis, E. Ramasso, G. Tziritas, M. Rombaut, D. Pellerin
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引用次数: 8

摘要

我们提出了一个通用框架,重点关注个人/多人的自动运动形状分析和合适的特征提取,可用于真实,动态和无约束环境下的动作/活动识别问题。我们考虑了来自单个未校准的运动摄像机的各种运动视频,以评估所提出方法的鲁棒性。我们使用了一个易于扩展的分层方案,以便将它们分类为个人和团队运动的视频。鲁棒性、自适应性和不受摄像机运动影响,所提出的特征结合在可转移信念模型(TBM)框架内,提供两级(帧和镜头)视频分类。使用250多个运动会视频数据集的实验结果表明,该方案具有良好的性能,个人/团队运动分类准确率达到97%。
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Automatic people detection and counting for athletic videos classification
We propose a general framework that focuses on automatic individual/multiple people motion-shape analysis and on suitable features extraction that can be used on action/activity recognition problems under real, dynamical and unconstrained environments. We have considered various athletic videos from a single uncalibrated, possibly moving camera in order to evaluate the robustness of the proposed method. We have used an easily expanded hierarchical scheme in order to classify them to videos of individual and team sports. Robust, adaptive and independent from the camera motion, the proposed features are combined within Transferable Belief Model (TBM) framework providing a two level (frames and shot) video categorization. The experimental results of 97% individual/team sport categorization accuracy, using a dataset of more than 250 videos of athletic meetings indicate the good performance of the proposed scheme.
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