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Joint Segmentation and Recognition of Worker Actions using Semi-Markov Models

机译:使用半马尔可夫模型的联合分割与识别工人行动

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Vision-based automated recognition of worker actions has gain lots of interest during the past few years. However, existing research all requires pre-segmented video clips, which is not applicable in the real situation. Furthermore, pre-segmented videos abandon the temporal information of action transition. A joint action segmentation and recognition method, which can segment continuous video stream while recognizing the action type for each segment, is an urgent need. In this paper, we model the worker actions with a discriminative semi-Markov model. In the model, a set of features is defined to capture both the local and global characteristics of each action cycle. Then the semi-Markov model is formulated as an optimization problem and solved by the cutting plane method for simultaneous action segmentation and recognition. Scale-Invariant Feature Transform (SIFT) is applied to detect feature points in the region of interest in every frame. Two descriptors (Histograms of Oriented Gradients - HOG, Histograms of Optical Flow - HOF), are computed in the feature points to encode the scenario and motion flow simultaneously. Finally, the Bag-of-Feature strategy is adopted for feature representation. Experimental results from real world construction videos show that the proposed method is able to segment and recognize continuous worker actions correctly, resulting in a prospecting application in automated productivity analysis.
机译:基于视觉的自动识别工人行动在过去几年中获得了很多兴趣。然而,现有的研究都需要预分段的视频剪辑,这不适用于实际情况。此外,预分段视频放弃了动作转换的时间信息。一个联合动作分割和识别方法,可以在识别每个段识别每个段的动作类型的同时对连续视频流进行段,是迫切需要的。在本文中,我们使用鉴别的半马尔可夫模型模拟工人行动。在该模型中,定义了一组特征来捕获每个动作周期的本地和全局特征。然后将半马尔可夫模型作为优化问题配制成优化问题,并通过切割平面方法解决,用于同时动作分割和识别。尺度不变功能变换(SIFT)应用于在每个帧中检测感兴趣区域中的特征点。两个描述符(定向梯度的直方图 - Hog,光学流动hof的直方图)在特征点中计算以同时对场景和运动流进行编码。最后,采用特征策略进行特征表示。真实世界施工视频的实验结果表明,该方法能够正确分割和识别连续工人行动,导致自动生产率分析中的勘探应用。

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