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Human motion based intent recognition using a deep dynamic neural model

机译:使用深度动态神经模型的基于人体运动的意图识别

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摘要

The understanding of human intent based on human motions remains a highly relevant and challenging research topic. The relationship of the sequence of human motions may be a possible solution to recognize human intention. The supervised multiple timescale recurrent neural network (supervised MTRNN) model is a useful tool for motion classification. In this paper, we propose a new model to understand human intention based on human motions in real-time through a deep structure including two supervised MTRNN models, which are based on understanding the meaning of a series of human motions. The 1st supervised MTRNN layer classifies motion labels while the 2nd supervised MTRNN layer in the deep dynamic neural structure identifies human intention using the results of the 1st supervised MTRNN. We also considered the action-perception cycle effect between the 1st and the 2nd supervised MTRNNs, in which the motion label perception and internal action (motion prediction) form a cycle to improve the motion classification and intent recognition performance. A group of tasks was designed around movements involving two objects in an attempt to detect different motions and intentions based on the proposed deep dynamic neural model. The experimental results showed the deep supervised MTRNN to be more robust and to outperform the single layer supervised MTRNN model for detecting human intention. The action-perception cycle was found to efficiently improve both motion classification and prediction, which is important for human intent recognition. (C) 2015 Elsevier B.V. All rights reserved.
机译:基于人的动作对人的意图的理解仍然是高度相关且具有挑战性的研究主题。人类动作序列的关系可能是识别人类意图的可能解决方案。监督多时标递归神经网络(监督MTRNN)模型是用于运动分类的有用工具。在本文中,我们提出了一个新模型,该模型通过一个深层结构(包括两个受监督的MTRNN模型)来基于人的运动实时理解人的意图,这两个模型基于对一系列人的运动的理解。第一监督MTRNN层对运动标签进行分类,而深层动态神经结构中的第二监督MTRNN层则使用第一监督MTRNN的结果识别人的意图。我们还考虑了第一和第二监督的MTRNN之间的动作知觉循环效应,其中运动标签感知和内部动作(运动预测)形成一个循环来改善运动分类和意图识别性能。在涉及两个对象的运动周围设计了一组任务,以尝试根据提出的深度动态神经模型检测不同的运动和意图。实验结果表明,深度监督的MTRNN具有更好的鲁棒性,并且在检测人的意图方面优于单层监督的MTRNN模型。行动知觉周期被发现可以有效地改善运动分类和预测,这对于人类的意图识别很重要。 (C)2015 Elsevier B.V.保留所有权利。

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