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NOHAR - NOvelty discrete data stream for Human Activity Recognition based on smartphones with inertial sensors

机译:基于惯性传感器的智能手机的人类活动识别Nohar - 新颖的离散数据流

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Smartphone sensing capabilities have enabled human activity recognition (HAR) solutions to better understand human behavior through computational techniques. However, such solutions have suffered from scalability problems due to the high consumption of computational resources (e.g. memory and processing) and the difficulty of acting in real time due to not observing data evolution over time. These problems occur because the HAR solutions for smartphones have been solved through offline learning with models limited by a data history. The disadvantage of this approach is that human activities constantly change over time and are strongly influenced by the physical environment and user profile. To overcome such problem, this paper proposes a novel low-cost learning algorithm called NOHAR (NOvelty discrete data stream for Human Activity Recognition), focused on continuous flow of data analysis. NOHAR is an online classification algorithm based on symbolic data generated by a discretization process using algorithms as SAX and SFA. The advantages of these algorithms are their abilities to compress and reduce the dimensionality of data. In addition, this paper proposes a new framework called DISTAR (DIscrete STream learning for Activity Recognition) focused on the data streaming analysis. Its goals include standardizing the development of online algorithms for symbolic data. Experimental results using three databases show that NOHAR is on average 33 times faster than the state of the art and can reduce memory consumption by an average of 99.97%.
机译:智能手机传感能力使人类活动识别(HAR)解决方案能够通过计算技术更好地理解人类行为。然而,由于计算资源的消耗量高(例如,记忆和处理)的高消耗以及由于未观察到随时间的时间演变而实时行动,因此这种解决方案遭受可扩展性问题。出现这些问题,因为智能手机的HAR解决方案已经通过离线学习来解决数据历史限制的模型。这种方法的缺点是人类活动随着时间的推移不断变化,并且受到物理环境和用户简档的强烈影响。为了克服此类问题,本文提出了一种名为Nohar(用于人类活动识别的新型离散数据流)的新型低成本学习算法,专注于连续的数据分析流量。 Nohar是一种基于通过使用算法作为SAX和SFA产生的离散化进程生成的符号数据的在线分类算法。这些算法的优点是它们压缩和降低数据的维度的能力。此外,本文提出了一种称为Distar(离散流学习的用于活动识别的离散流学习)的新框架集中于数据流分析。其目标包括标准化为符号数据的在线算法的开发。使用三个数据库的实验结果表明,诺哈尔平均比现有技术快33倍,并且可以将内存消耗降至99.97%。

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