Abstract

Sensor-based human activity recognition (HAR) has attracted interest both in academic and applied fields, and can be utilized in health-related areas, fitness, sports training, etc. With a view to improving the performance of sensor-based HAR and optimizing the generalizability and diversity of the base classifier of the ensemble system, a novel HAR approach (pairwise diversity measure and glowworm swarm optimization-based selective ensemble learning, DMGSOSEN) that utilizes ensemble learning with differentiated extreme learning machines (ELMs) is proposed in this paper. Firstly, the bootstrap sampling method is utilized to independently train multiple base ELMs which make up the initial base classifier pool. Secondly, the initial pool is pre-pruned by calculating the pairwise diversity measure of each base ELM, which can eliminate similar base ELMs and enhance the performance of HAR system by balancing diversity and accuracy. Then, glowworm swarm optimization (GSO) is utilized to search for the optimal sub-ensemble from the base ELMs after pre-pruning. Finally, majority voting is utilized to combine the results of the selected base ELMs. For the evaluation of our proposed method, we collected a dataset from different locations on the body, including chest, waist, left wrist, left ankle and right arm. The experimental results show that, compared with traditional ensemble algorithms such as Bagging, Adaboost, and other state-of-the-art pruning algorithms, the proposed approach is able to achieve better performance (96.7% accuracy and F1 from wrist) with fewer base classifiers.

Highlights

  • In recent years, many works [1,2] have shown that human activity recognition (HAR) has enabled various applications

  • The contributions of this paper can be described as follows: (1) We propose a novel sensor-based HAR approach based on extreme learning machines (ELMs) and DMGSOSEN for improving the recognition performance and reducing the size of ensemble

  • We find that the proposed method eliminates more than 60% of the base classifiers in the initial pool and achieves better recognition performance compared with Bagging and Adaboost, demonstrating the effectiveness of the proposed DMGSOSEN for HAR

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Summary

Introduction

Many works [1,2] have shown that human activity recognition (HAR) has enabled various applications. The neural network was applied to recognize eight different activities of construction workers, and showed the best recognition accuracy when compared with five other machine learning algorithms [9]. When the number of base classifiers increases, other heuristic algorithms will encounters problems when solving the ensemble pruning problem, including poor solution quality, large time consumption, and low convergence Based on these considerations, this paper proposes a novel selective ensemble method, DMGSOSEN, which combines pairwise diversity and the GSO algorithm for HAR. (1) We propose a novel sensor-based HAR approach based on ELM and DMGSOSEN for improving the recognition performance and reducing the size of ensemble. The DMGSOSEN is a novel ensemble pruning approach that combines existing algorithms, it has good capacity of selecting the generated base classifiers to show its desirable performance for HAR.

The Proposed HAR Approach Based on ELM and DMGSOSEN
Base Classifier Generation
Pairwise Diversity Measures
Discrete Glowworm Swarm Optimization
The Proposed DMGSOSEN-Based Classifier Selection
Dataset
Feature Extraction
Experimental Setup
Pre-Pruning Based on Pairwise Diversity Measures
Performance Measures
Experimental Results
Compared to Traditional Ensemble Algorithm-Based HAR
Compared to the State-of-the-Art Pruning Approach-Based HAR
Compared to the Previous Studies in HAR
Conclusions
Full Text
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