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Distributed and Parallel Decision Forest for Human Activities Prediction: Experimental Analysis on HAR-Smartphones Dataset

机译:用于人类活动预测的分布式并行决策森林:HAR智能手机数据集的实验分析

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摘要

Sensor-based human motion detection requires the subtle amount of knowledge about various human activities from fitted sensor observations and readings. The prevalent pattern recognition methodologies have made immense progress over recent years. Nonetheless, these kind of methods usually rely on the particular heuristic variable extraction, which could inhibit generalization realization. This paper presents a distributed and parallel decision forest approach for modeling the Human Activity Recognition Using Smartphones Data. We made an attempt to achieve an optimal generalization performance with possible reduction in overfitting. Later, we compared the performance of proposed procedure with some existing approaches. It is observed that our adopted procedure outperforms with comparatively better statistical performance measures. It also gained 4.7x speed up in computation.
机译:基于传感器的人体运动检测需要从合适的传感器观察和读数中获得关于各种人体活动的微妙知识。近年来,流行的模式识别方法已经取得了巨大的进步。尽管如此,这些方法通常依赖于特定的启发式变量提取,这可能会抑制泛化的实现。本文提出了一种分布式并行决策森林方法,用于使用智能手机数据对人类活动识别进行建模。我们试图通过减少过度拟合来实现最佳的泛化性能。后来,我们将提议的程序的性能与一些现有方法进行了比较。可以看出,我们采用的程序在统计性能指标方面相对较好。它还使计算速度提高了4.7倍。

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