Nested Binary Classifier as an Outlier Detection Method in Human Activity Recognition Systems

Entropy (Basel). 2023 Jul 26;25(8):1121. doi: 10.3390/e25081121.

Abstract

The present article is devoted to outlier detection in phases of human movement. The aim was to find the most efficient machine learning method to detect abnormal segments inside physical activities in which there is a probability of origin from other activities. The problem was reduced to a classification task. The new method is proposed based on a nested binary classifier. Test experiments were then conducted using several of the most popular machine learning algorithms (linear regression, support vector machine, k-nearest neighbor, decision trees). Each method was separately tested on three datasets varying in characteristics and number of records. We set out to evaluate the effectiveness of the models, basic measures of classifier evaluation, and confusion matrices. The nested binary classifier was compared with deep neural networks. Our research shows that the method of nested binary classifiers can be considered an effective way of recognizing outlier patterns for HAR systems.

Keywords: anomalies; classification; deep learning; human activity recognition; machine learning; outliers.

Grants and funding

This research received no external funding.