The joint use of sequence features combination and modified weighted SVM for improving daily activity recognition

Bilal M’hamed Abidine1, Lamya Fergani1, Belkacem Fergani1, Mourad Oussalah2
1Laboratoire d’Ingénierie des Systèmes Intelligents et Communicants, LISIC Laboratory, Electronics and Computer Sciences Department, University of Science and Technology Houari Boumediene (USTHB), 32, El Alia, 16111, Bab Ezzouar, Algiers, Algeria
2Electrical and Computer Engineering Department, University of Birmingham, Birmingham, UK

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