模拟学习动作

Philippe Saadé, P. Joly, A. Awada
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引用次数: 2

摘要

本文提出了一种新的方法来生成新的动作,以学习人类动作识别背景下的Adaboost等监督算法。事实上,学习过程需要大量和各种各样的数据。我们在这项工作中的动机是减少对公共数据库的依赖,并允许使用小的动作集进行学习。我们通过扩大由不同的人以不同的方式执行并由Kinect捕获的一组动作来克服非歧视性动作数据集的问题。我们提出了一种从Kinect设备或简单注释数据放大原始捕获数据集的方法。这是通过将动作序列的极值组合成间隔,在其中创建随机点,并添加某些变量来区分样本来实现的。使用Adaboost对每个关节使用简单的特征和强大的分类器来学习和测试这些动作。最后,计算置信系数,并将其作为更高级别Adaboost分类器的输入。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Simulating actions for learning
This paper presents a novel approach for generating new actions to learn supervised algorithms such as the Adaboost in the context of human action recognition. Indeed, the learning process requires a large amount and variety of data. Our motivation in this work is to reduce the dependency on public databases and allow learning with small sets of actions. We overcome the problem of nondiscriminatory action datasets for action recognition by enlarging a set of actions performed by different persons in different ways and captured by a Kinect. We present a way to enlarge the originally captured dataset from a Kinect device or from simply annotated data. This is done by combining the extrema of the action sequences into intervals, creating random points within them, and adding certain variables to discriminate the samples. These actions are learned and tested with a late fusion Adaboost using simple features and a strong classifier for each joint. Finally, a confidence coefficient is calculated and used as input of a higher level Adaboost classifier.
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