Abstract

Gait, as a kind of biological feature, has a profound value in personnel identification. This paper analyzes gait characteristics based on acceleration sensors of smart phones and proposes a new gait recognition method. First, in view of the existing methods in the process of extraction of gait features, a large number of redundant calculations, cycle detection error, and the phase deviation issue during the week put forward the Shape Context (SC) and Linear Time Normalized (LTN) combining SCLTN calibration method of gait cycle sequence matching, to represent the whole extract typical gait cycle gait. In view of the existing extracted gait features are still some conventional features; the velocity change of relatively uniform acceleration and the change of acceleration per unit time are proposed as new features. Secondly, combining new features with traditional features to form a new feature is set for training alternative feature set, from which the training time and recognition effect of multiple classifiers are screened. Finally, a new multiclassifier fusion method, Multiple Scale Voting (MSV), is proposed to fuse the results of Multiple classifiers to obtain the final classification results. In order to verify the performance of the proposed method, gait data of 32 testers are collected. The final experimental results show that the new feature has good separability, and the recognition rate of fusion feature set after MSV algorithm is 98.42%.

Highlights

  • The human gait has a very unique pattern that can be used for identification and verification

  • To improve the existing gait identification performance based on the smartphone accelerometer, a recognition method based on multiple classifier fusion (MCF) is proposed

  • The paper improves a method based on Linear Time Normalized (LTN), introduces the concept of shape context, proposes a method called SCLTN to extract the typical period from gait data, and adds pointto-point local structure information to enhance LTN in the matching process

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Summary

Introduction

The human gait has a very unique pattern that can be used for identification and verification. The above studies develop a universal feature selection for the human acceleration signal and obtain excellent recognition rates, but they do not explore the motion features of the person while walking and only select the single classifier with the best recognition rate to explore Due to these deficiencies, this paper extracts the rates of acceleration changes and amounts of velocity change associated with relative to uniform acceleration from gait data as new features, combines common time-frequency domain features to model and identify multiple classifiers, and proposes multiscale voting (MSV) for fusion processing to obtain final recognition results

Related Studies
Data Acquisition and Preprocessing
Period Division and Feature Extraction
Result
Feature Extraction
Classifier Fusion Algorithm
Experimental Results and Analysis
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