4.4 Article

Action recognition of dance video learning based on embedded system and computer vision image

Journal

MICROPROCESSORS AND MICROSYSTEMS
Volume 81, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.micpro.2020.103779

Keywords

Field-programmable gate array (FPGA); Learning action recognition; Embedded system tool

Funding

  1. Art Science Planning a major Project of Heilongjiang Province, 'Social Dance Education Quality Enhancement New Path Research of Heilongjiang'

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The research focuses on classifying and recognizing Indian classical dance videos using FPGA, with data collected from offline manual creation and online YouTube sources. Training and testing were conducted using different subjects and poses, resulting in a 90% recognition rate compared to other classification models.
Extraction and unfettered online / offline video sequence to identify complex human activity is computer vision a challenging task. To presents the classification of Indian classical dance moves using the powerful features of embedded system tools: Field Programmable Gate Array (FPGA). In this work, the Indian classical dance video for human action recognition is, YouTube data from offline and online control audio and video recordings of live performances carried out. Handprint create offline data with ten different themes familiar dance of 200 m / from various Indian classical dance forms in the context of a variety of poses. Online data collection dance ten different subjects from YouTube. Each dance posture is occupied 60 or video in both cases. FPGA training and 8 different sample dimensions, each performed by a plurality of sets of subject. The remaining two samples for testing the trained FPGA. Different FPGA architecture design, and with our test data in order to obtain better recognition accuracy. Compared the report on the same data set and other classification model to achieve a 90% recognition rate.

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