Abstract

This paper proposed a new novel method to adaptively detect gait patterns in real time through the ground contact forces (GCFs) measured by load cell. The curve similarity model (CSM) is used to identify the division of off-ground and on-ground statuses, and differentiate gait patterns based on the detection rules. Traditionally, published threshold-based methods detect gait patterns by means of setting a fixed threshold to divide the GCFs into on-ground and off-ground statuses. However, the threshold-based methods in the literature are neither an adaptive nor a real-time approach. In this paper, the curve is composed of a series of continuous or discrete ordered GCF data points, and the CSM is built offline to obtain a training template. Then, the testing curve is compared with the training template to figure out the degree of similarity. If the computed degree of similarity is less than a given threshold, they are considered to be similar, which would lead to the division of off-ground and on-ground statuses. Finally, gait patterns could be differentiated according to the status division based on the detection rules. In order to test the detection error rate of the proposed method, a method in the literature is introduced as the reference method to obtain comparative results. The experimental results indicated that the proposed method could be used for real-time gait pattern detection, detect the gait patterns adaptively, and obtain a low error rate compared with the reference method.

Highlights

  • Gait pattern detection is an effective way to monitor and analyze the condition of human walking [1]

  • The experimental results indicated that the proposed method could be used for real-time gait pattern detection, detect the gait patterns adaptively, and obtain a low error rate compared with the reference method

  • This paper proposes a gait pattern detection method based on the curve similarity model (CSM), and the ground contact forces (GCFs) points in a time interval are taken as a curve to study

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Summary

Introduction

Gait pattern detection is an effective way to monitor and analyze the condition of human walking [1]. The faster the same person walks, and the larger the GCF value, it is difficult to achieve real-time gait phase accurate detection by using the threshold method. Three initial threshold values were set for all subjects in all experiments, while three adjustable thresholds would be obtained to adapt the human walking with a detection accuracy of almost 90%. This paper proposes a gait pattern detection method based on the curve similarity model (CSM), and the GCF points in a time interval are taken as a curve to study. In real-time gait detection, the GCF signal at the current and past intervals is used as a test curve, and is continuously compared with the gait template curve to calculate the similarity distance between the test curve and the template curve. In order to test the detection error rate of the proposed method, a method in the literature is introduced as the reference method to obtain comparative results

Subjects and Procedures
Gait Pattern Detection Algorithm
Global Threshold Method and Its Disadvantage
Change inneed
Curve Similarity Model
Gait Phase Classification by GCF
Evaluation Protocols of the Gait Phase Detection
Development of Gait Phase Classifiers by EC
Real-Time Gait Detection by CSMs
Results and Discussion
Results of Gait Pattern Detection
Accuracy
Robustness and Stability
12.Result
Advantages of the Research
Limitation of the Research
Conclusions
Full Text
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