Redirigiendo al acceso original de articulo en 20 segundos...
Inicio  /  Information  /  Vol: 13 Par: 11 (2022)  /  Artículo
ARTÍCULO
TITULO

A Novel Deep Transfer Learning Approach Based on Depth-Wise Separable CNN for Human Posture Detection

Roseline Oluwaseun Ogundokun    
Rytis Maskeliunas    
Sanjay Misra and Robertas Damasevicius    

Resumen

Human posture classification (HPC) is the process of identifying a human pose from a still image or moving image that was recorded by a digicam. This makes it easier to keep a record of people?s postures, which is helpful for many things. The intricate surroundings that are depicted in the image, such as occlusion and the camera view angle, make HPC a difficult process. Consequently, the development of a reliable HPC system is essential. This study proposes the ?DeneSVM?, an innovative deep transfer learning-based classification model that pulls characteristics from image datasets to detect and classify human postures. The paradigm is intended to classify the four primary postures of lying, bending, sitting, and standing. These positions are classes of sitting, bending, lying, and standing. The Silhouettes for Human Posture Recognition dataset has been used to train, validate, test, and analyze the suggested model. The DeneSVM model attained the highest test precision (94.72%), validation accuracy (93.79%) and training accuracy (97.06%). When the efficiency of the suggested model was validated using the testing dataset, it too had a good accuracy of 95%.