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Online Detection of Long-Term Daily Living Activities by Weakly Supervised Recognition of Sub-Activities

机译:通过弱监督子活动的在线检测长期日常生活活动

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In this paper, we address detection of activities in long-term untrimmed videos. Detecting temporal delineation of activities is important to analyze large-scale videos. However, there are still challenges yet to be overcome in order to have an accurate temporal segmentation of activities. Detection of daily-living activities is even more challenging due to their high intra-class and low inter-class variations, complex temporal relationships of sub-activities performed in realistic settings. To tackle these problems, we propose an online activity detection framework based on the discovery of sub-activities. We consider a long-term activity as a sequence of short-term sub-activities. Then we utilize a weakly supervised classifier trained on discovered sub-activities which allows us to predict an ongoing activity before being completely observed. To achieve a more precise segmentation a greedy post-processing technique based on Markov models is employed. We evaluate our framework on DAHLIA and GAADRD daily living activity datasets where we achieve state-of-the-art results on detection of activities.
机译:在本文中,我们解决了长期未经监测视频中的活动的检测。检测对活动的时间描绘对于分析大规模视频非常重要。然而,仍有挑战尚未得到挑战,以便具有准确的活动的时间分割。由于阶级内部和阶级阶级的阶级和阶级阶级的阶级阶级变化,在现实环境中进行的子活动的复杂时间关系,检测日常生活活动更具挑战性。为了解决这些问题,我们提出了一种基于分布活动的在线活动检测框架。我们将长期活动视为一系列短期子活动。然后,我们利用弱监督的分类器,受到发现的子活动,允许我们在完全观察之前预测持续的活动。为了实现更精确的分割,采用了基于马尔可夫模型的贪婪后处理技术。我们评估了我们在大丽花和Gaadrd日常生活活动数据集上的框架,在那里我们在检测活动中实现最先进的结果。

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