SPLGMLOct 11, 2019

Accelerometer-Based Gait Segmentation: Simultaneously User and Adversary Identification

arXiv:1910.06149v1
Originality Incremental advance
AI Analysis

This addresses cybersecurity by enhancing identification beyond user-only methods, though it appears incremental as it builds on existing gait analysis with new features and metrics.

The paper tackles the problem of gait segmentation from accelerometer data to simultaneously identify users and adversaries, achieving 98.79% accuracy for 6-class classification and 99.06% for binary classification.

In this paper, we introduce a new gait segmentation method based on accelerometer data and develop a new distance function between two time series, showing novel and effectiveness in simultaneously identifying user and adversary. Comparing with the normally used Neural Network methods, our approaches use geometric features to extract walking cycles more precisely and employ a new similarity metric to conduct user-adversary identification. This new technology for simultaneously identify user and adversary contributes to cybersecurity beyond user-only identification. In particular, the new technology is being applied to cell phone recorded walking data and performs an accuracy of $98.79\%$ for 6 classes classification (user-adversary identification) and $99.06\%$ for binary classification (user only identification). In addition to walking signal, our approach works on walking up, walking down and mixed walking signals. This technology is feasible for both large and small data set, overcoming the current challenges facing to Neural Networks such as tuning large number of hyper-parameters for large data sets and lacking of training data for small data sets. In addition, the new distance function developed here can be applied in any signal analysis.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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