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Weakly-Supervised Multi-Person Action Recognition in 360° Videos

机译:360°视频中的弱监督多人动作识别

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The recent development of commodity 360° cameras have enabled a single video to capture an entire scene, which endows promising potentials in surveillance scenarios. However, research in omnidirectional video analysis has lagged behind the hardware advances. In this work, we address the important problem of action recognition in topview 360° videos. Due to the wide filed-of-view, 360° videos usually capture multiple people performing actions at the same time. Furthermore, the appearance of people are deformed. The proposed framework first transforms top-view omnidirectional videos into panoramic videos using a calibrationfree method. Then spatial-temporal features are extracted using region-based 3D CNNs for action recognition. We propose a weakly-supervised method based on multiinstance multi-label learning, which trains the model to recognize and localize multiple actions in a video using only video-level action labels as supervision. We perform experiments to quantitatively validate the efficacy of the proposed method over state-of-the-art baselines and variants of our model, and qualitatively demonstrate action localization results. To enable research in this direction, we introduce the 360Action dataset. It is the first omnidirectional video dataset for multi-person action recognition with a diverse set of scenes, actors and actions. The dataset is available at https://github.com/ryukenzen/360action.
机译:商用360°摄像机的最新发展使单个视频可以捕获整个场景,这为监视场景提供了广阔的前景。但是,全向视频分析的研究落后于硬件的进步。在这项工作中,我们解决了俯视360°视频中动作识别的重要问题。由于视野宽阔,因此360°视频通常会捕获多个同时执行动作的人。此外,人的外貌变形。所提出的框架首先使用免校准方法将顶视图全向视频转换为全景视频。然后,使用基于区域的3D CNN提取时空特征以进行动作识别。我们提出了一种基于多实例多标签学习的弱监督方法,该方法训练模型以仅使用视频级动作标签作为监督来识别和定位视频中的多个动作。我们进行实验以定量地验证所提出方法在模型的最新基准和变量上的功效,并定性地证明了动作定位的结果。为了朝这个方向进行研究,我们引入了360Action数据集。它是第一个用于多人动作识别的全向视频数据集,具有多种场景,演员和动作集。该数据集位于https://github.com/ryukenzen/360action。

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