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3D human behavior recognition based on spatiotemporal texture features

机译:基于时空纹理特征的3D人类行为识别

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Nowadays, more and more activity recognition algorithms begin to improve recognition performance by combining the RGB and depth information. Although, the space-time volumes (STV) algorithm and the space-time local features algorithm can combine the RGB and depth information effectively, they also have their own defects. Such as they need expensive computational cost and they are not suitable for modeling nonperiodic activity. In this paper, we propose a novel algorithm for three dimensional human activity recognition that combines spatial-domain local texture features and spatio-temporal local texture features. On the one hand, in order to extract spatial local texture features, we mix the RGB and depth image sequence which have been applied with ViBe (Visual Background extractor) and binarization operator. Then we obtain the RGB-MOHBBI and depth-MOBHBI respectively and perform intersect operation on them. Afterwards, we extract LBP feature from the mixed MOHBBI to describe spatial domain feature. On the other hand, we follow the same background subtraction and binarization method to process the RGB and depth image sequences and get the spatial-temporal local texture features. And then, we project the three dimensional image volume on plane X-T and plane Y-T to get the spatio-temporal behavior volume change image to which we apply LBP operator to extract features that can represent human activity feature in spatio-temporal domain. At last, we combine the two local features that are extracted by LBP algorithm as one integrated feature of our model final output. Extensive experiments are conducted on the BUPT Arm Activity Dataset and the BUPT Arm And Finger Activity Dataset. The experimental results demonstrate the algorithm we proposed in this paper can make up for the deficiency of traditional activity recognition algorithms effectively and provide excellent experiment results on different databases of various complexities.
机译:如今,越来越多的活动识别算法开始通过结合RGB和深度信息来提高识别性能。尽管时空体积算法和时空局部特征算法可以有效地结合RGB和深度信息,但是它们也有其自身的缺陷。例如,它们需要昂贵的计算成本,并且不适合建模非周期性活动。在本文中,我们提出了一种新的用于三维人类活动识别的算法,该算法结合了空间域局部纹理特征和时空局部纹理特征。一方面,为了提取空间局部纹理特征,我们将RGB和深度图像序列混合在一起,这些序列已与ViBe(可视化背景提取器)和二值化运算符一起应用。然后我们分别获得RGB-MOHBBI和depth-MOBHBI并对其进行相交操作。然后,我们从混合的MOHBBI中提取LBP特征来描述空间域特征。另一方面,我们遵循相同的背景减法和二值化方法来处理RGB和深度图像序列,并获得时空局部纹理特征。然后,我们将三维图像体投影到平面X-T和平面Y-T上,以获取时空行为体变化图像,应用LBP算子提取时空行为体变化图像,该特征可以表示时空域中的人类活动特征。最后,我们结合了LBP算法提取的两个局部特征,作为模型最终输出的一个综合特征。在BUPT手臂活动数据集和BUPT手臂和手指活动数据集上进行了广泛的实验。实验结果表明,本文提出的算法可以有效地弥补传统活动识别算法的不足,并在各种复杂程度不同的数据库上提供了优异的实验结果。

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