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Adaptive Segmentation and Sequence Learning of human activities from skeleton data

机译:来自骨架数据的自适应分割和序列学习人类活动

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Discovering underlying patterns for predicting future actions from spatio-temporal human activity information is a fundamental component of research related to the development of expert systems in human activity recognition and assistive robotics. Current research focuses on classification or learning representations of activities for various applications. However, not much attention is given to the pattern discovery of activities which have a major role in the prediction of unseen actions. This paper proposes a novel Adaptive Segmentation and Sequence Learning (ASSL) framework which aims at segmenting unlabelled observations of human activities from extracted 3D joint information. Learning from these obtained segments provides information about the underlying patterns of activity sequences needed in predicting subsequent actions. In the proposed method, the temporal accumulated motion energy of body parts in an activity is utilised in the segmentation process to obtain key actions from unlabelled activity sequences since body parts show changes in acceleration and deceleration during an activity. Based on the segments obtained, the temporal sequence of transitions across activity segments are learned by employing a Long Short-Term Memory Recurrent Neural Network. This ASSL technique has been evaluated using both an experimental human activity dataset and a public activity dataset, and achieved a better performance when compared with other techniques including an Auto-regressive Integrated Moving Average, Support Vector Regression and Gaussian Mixture Regression Models in learning to predict patterns of activity sequences.
机译:发现潜在的模式从时空的人类活动信息来预测未来的行动是与专家系统在人类活动的识别和辅助机器人的开发研究一个基本组成部分。目前研究的重点分类或学习的各种应用的活动表示。然而,没有太大的注意了的具有在看不见行动的预测中起主要作用的活动模式发现。本文提出了一种新颖的自适应分割和序列学习(ASSL)框架,其目的是从提取的3D信息联合分割人类活动的未标记的观测。从这些获得的段学习提供了有关在预测后续操作所需要的活动序列的基本模式的信息。在所提出的方法中,身体部位的活动的时间累计的运动能量被用于分割处理以获得来自未标记的活性的序列的主要行动,因为身体部位显示在活动期间中的加速和减速变化。基于所获得的部分,横跨活动段转变的时间顺序是由采用长短时记忆递归神经网络学会。同时使用一个实验性的人类活动数据集和公共活动数据集时,与其他技术,包括自回归移动平均相比,这种ASSL技术进行了评估,并取得了较好的业绩,支持向量回归和高斯混合回归模型中学习预测活动序列的模式。

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