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首页> 外文期刊>IAES International Journal of Artificial Intelligence >Using skeleton model to recognize human gait gender
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Using skeleton model to recognize human gait gender

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摘要

Biometrics became fairly important to help people identifications persons by their individualities or features. In this paper, gait recognition has been based on a skeleton model as an important indicator in prevalent activities. Using the reliable dataset for the Chinese Academy of Sciences (CASIA) of silhouettes class C database. Each video has been discredited to 75 frames for each (20 persons (10 males and 10 females)) as (1.0), the result will be 1,500 frames. After Pre-processing the images, many features are extracted from human silhouette images. For gender classification, the human walking skeleton used in this study. The model proposed is based on morphological processes on the silhouette images. The common angle has been computed for the two legs. Later, principal components analysis (PCA) was applied to reduce data using feature selection technology to get the most useful information in gait analysis. Applying two classifiers artificial neural network (ANN) and Gaussian Bayes to distinguish male or female for each classifier. The experimental results for the suggested method provided significant accomplishing about (95.5), and accuracy of (75). Gender classification using ANN is more efficient from the Gaussian Bayes technique by (20), where ANN technique has given a superior performance in recognition. © 2023, Institute of Advanced Engineering and Science. All rights reserved.

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