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Energy Efficient Smartphone-Based Users Activity Classification

机译:基于智能手机的节能用户活动分类

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Nowadays most people carry a smartphone with built-in sensors (e.g., accelerometers, gyroscopes) capable of providing useful data for Human Activity Recognition (HAR). Machine learning classification methods have been intensively researched and developed for HAR systems, each with different accuracy and performance levels. However, acquiring sensor data and executing machine learning classifiers require computational power and consume energy. As such, a number of factors, such as inadequate preprocessing, can have a negative impact on the overall HAR performance, even on high-end handheld devices. While high accuracy can be extremely important in some applications, the device's battery life can be highly critical to the end-user. This paper is focused on the k-nearest neighbors' algorithm (kNN), one of the most used algorithms in HAR systems, and research and develop energy-efficient implementations for mobile devices. We focus on a kNN implementation based on Locality-Sensitive Hashing (LSH) with a significant positive impact on the device's battery life, fully integrated into a mobile HAR Android application able to classify human activities in real-time. The proposed kNN implementation was able to achieve execution time reductions of 50% over other versions of kNN with average accuracy of 96.55% when considering 8 human activities.
机译:如今,大多数人都携带带有内置传感器(例如,加速度计,陀螺仪)的智能手机,该传感器能够为人类活动识别(HAR)提供有用的数据。机器学习分类方法已经针对HAR系统进行了深入的研究和开发,每种方法具有不同的准确性和性能水平。然而,获取传感器数据并执行机器学习分类器需要计算能力并消耗能量。因此,许多因素(例如预处理不充分)会对整体HAR性能产生负面影响,即使对高端手持设备也是如此。尽管高精度在某些应用中可能非常重要,但该设备的电池寿命对于最终用户而言却至关重要。本文着重研究k近邻算法(kNN),它是HAR系统中最常用的算法之一,并研究和开发了移动设备的节能实现。我们专注于基于位置敏感哈希(LSH)的kNN实施,这对设备的电池寿命产生了显着的积极影响,已完全集成到可对人类活动进行实时分类的移动HAR Android应用程序中。考虑到8种人类活动,拟议的kNN实施能够比其他版本的kNN减少50%的执行时间,平均准确度为96.55%。

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