عنوان المقالة:نموذج نظام محسّن يعتمد على منهجيات تعلم الآلة لتمييز أفعال البالغين على الأطفال Optimised ML-based System Model for Adult-Child Actions Recognition
محمد الحمامي | Muhammad Alhammami | 8477
نوع النشر
مجلة علمية
المؤلفون بالعربي
د. محمّد الحمّامي وآخرون
المؤلفون بالإنجليزي
Muhammad Alhammami, Samir Marwan Hammami, Chee-Pun Ooi and Wooi-Haw Tan
الملخص العربي
نموذج نظام يعتمد على منهجيات تعلم الآلة لتمييز أفعال البالغين على الأطفال
الملخص الانجليزي
Many critical applications require accurate real-time human action recognition. However, there are many hurdles associated with capturing and pre-processing image data, calculating features, and classification because they consume significant resources for both storage and computation. To circumvent these hurdles, this paper presents a recognition machine learning (ML) based system model which uses reduced data structure features by projecting real 3D skeleton modality on virtual 2D space. The MMU VAAC dataset is used to test the proposed ML model. The results show a high accuracy rate of 97.88% which is only slightly lower than the accuracy when using the original 3D modality-based features but with a 75% reduction ratio from using RGB modality. These results motivate implementing the proposed recognition model on an embedded system platform in the future.
تاريخ النشر
28/02/2019
الناشر
KSII Transactions on Internet and Information Systems
رقم المجلد
13
رقم العدد
2
ISSN/ISBN
1976-7277
رابط DOI
10.3837/tiis.2019.02.024
الصفحات
929-944
رابط خارجي
http://www.itiis.org/digital-library/manuscript/2265
الكلمات المفتاحية
Human action recognition, 2D Skeleton features, 3D Projection, Reduced data structure, Compound features selection method
رجوع