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MODELING 3D CONVOLUTION ARCHITECTURE FOR ACTIONS RECOGNITION

机译:建模3D卷积架构进行动作识别

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Action recognition infrastructure can be applied anywhere behavior analysis is required and represents presently a domain of maximum actuality in security and surveillance. The model based on 3D Convolutions is a middle ground between simple key-frame approaches based on 2D convolutions, and other more complex approaches based on Recurrent Neural Networks. Behavior analysis represents a domain greatly improved by action recognition. By placing human actions in different categories it is possible to extract statistics regarding a person's behavior, characteristics, abilities and preferences which can be processed later by specialized personnel, depending on the selected domain. The proposed model follows simple 3D convolution architecture. Hidden layers are composed of a convolution operation, an activation function and, sometimes, a pooling layer. Leaky ReLU was used as activation function to alleviate the problem of vanishing gradients. Batch Normalization is a technique used for scaling and adjusting the output of an activation layer, and it has been used to reduce over-fitting and decrease the training time. The 3D Convolution structure has the advantage of learning spatio-temporal features, because the convolution is applied over a sequence of frames. In the present paper is presented a proposed 3D convolution model that has average results, with an accuracy of approximately 55% on the NTU RGB+D dataset.
机译:动作识别基础设施可以应用任何地方行为分析,并且目前代表安全性和监督的最大现实领域。基于3D卷积的模型是基于2D卷积的简单键帧方法与基于经常性神经网络的其他更复杂的方法之间的中间地面。行为分析代表了行动识别大大提高的域名。通过将人类的行为放在不同类别中,可以提取关于一个人的行为,特征,能力和偏好的统计数据,这取决于所选域的专业人员可以通过专业人员处理。所提出的模型遵循简单的3D卷积架构。隐藏层由卷积操作,激活功能和有时是池化层组成。泄漏的Relu被用作激活函数,以减轻消失梯度的问题。批量归一化是一种用于缩放和调整激活层的输出的技术,它已被用于减少过度拟合并降低训练时间。 3D卷积结构具有学习时空特征的优点,因为卷积在一系列帧上施加。在本文中,提出了一个具有平均结果的建议的3D卷积模型,精度在NTU RGB + D数据集中大约为55%。

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