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Automated multi-feature human interaction recognition in complex environment

机译:复杂环境中自动多重特征人体交互识别

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The recognition of people's interactions is crucial for making the surveillance applications able to recognize unusual events in complex environments. Generally, multiple cameras are installed to capture videos from different views but these environments suffer from challenging issues: occlusions between persons and light and pose variations etc. We presented a computer vision system to recognize person-to-person interactions in public areas by considering individual actions and trajectory information under multiple camera views. We achieved our goal in two steps, namely, individual action recognition and interaction recognition. Extensive techniques have been used for individual action recognition with very good accuracy. Still, these techniques cannot handle the intricate settings in crowded areas. We have proposed Median Compound Local Binary Pattern (MDCLBP) and combined it with Histogram of Oriented Gradient (HOG). MDCLBP captures the information about the spatial organization of intensities and HOG uses histogram of oriented gradients to describe an image. MDCLBP is a modification of Compound Local Binary Pattern (CLBP). CLBP extracts texture information by using sign and magnitude information. MDCLBP is a variant of CLBP that uses sign information and instead of magnitude, difference from the median value at each 3 x 3 windows is used to get the descriptor robust to occlusions and light variations. We have combined the individual actions of two persons with trajectory information to recognize person-to-person interactions. Experiments are performed on well-known publically available IXMAS and OIXMAS datasets to demonstrate the effectiveness of our proposed technique for individual human action recognition. Person-to-person interaction recognition method is evaluated on HALLWAY dataset. Experiments carried out on varying views demonstrated that our proposed system achieved better accuracy and can meet the requirements of surveillance applications. (C) 2018 Elsevier B.V. All rights reserved.
机译:承认人们的互动是使能够在复杂环境中识别不寻常事件的监视应用来说至关重要。一般来说,安装多个摄像机以捕获来自不同视图的视频,但这些环境遭受了挑战性问题:人员和光线和姿势变化之间的遮挡,我们介绍了通过考虑个人识别公共区域的人员互动。在多个相机视图下的操作和轨迹信息。我们以两个步骤实现了目标,即个人行动识别和互动识别。广泛的技术已经用于单个动作识别,具有非常好的准确性。尽管如此,这些技术无法处理拥挤区域中的复杂设置。我们已经提出了中位数复合局部二进制模式(MDCLBP)并将其与定向梯度(HOG)的直方图组合。 MDCLBP捕获有关强度组织的信息,并使用面向渐变的直方图来描述图像。 MDCLBP是复合局部二进制图案(CLBP)的修改。 CLBP使用符号和幅度信息提取纹理信息。 MDCLBP是CLBP的变体,它使用符号信息和代替幅度,从每个3 x 3窗口的中位值的差异用于使描述符鲁棒堵塞和光变化。我们已经将两个人的个人行为与轨迹信息组合起来识别人对人的互动。实验是在公开的公共可用IXMAS和OIXMAS数据集上进行的,以证明我们提出的个人人类行动识别技术的有效性。在走廊DataSet上评估人对交互识别方法。在不同视图上进行的实验表明,我们所提出的系统取得了更好的准确性,可以满足监测应用的要求。 (c)2018 Elsevier B.v.保留所有权利。

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