CSDL Bài trích Báo - Tạp chí

Trở về

Taekwondo pose estimation with deep learning architectures on one-dimensional and two-dimensional data

Tác giả: Dinh Duc Luong, Vuong Quang Phuong, Hoang Do Thanh Tung
Số trang: P. 343-368
Số phát hành: Tập 39 - Số 4
Kiểu tài liệu: Tạp chí trong nước
Nơi lưu trữ: 03 Quang Trung
Mã phân loại: 005
Ngôn ngữ: Tiếng Anh
Từ khóa: Pose classification, skeleton, sports lessons, Taekwondo, moving picture
Chủ đề: Data base management
Tóm tắt:

This study extracts images from Taekwondo videos and generates skeleton data from frames using the Fast Forward Moving Picture Experts Group (FFMPEG) technique using MoveNet. After that, we use deep learning architectures such as Long Short-Term Memory Networks, Convolutional Long Short-Term Memory, and Long-term Recurrent Convolutional Networks to perform the poses classification tasks in Taegeuk in Jang lessons. This work presents two approaches. The first approach uses a sequence skeleton extracted from the image by Movenet. Second, we use sequence images to train using video classification architecture. Finally, we recognize poses in sports lessons using skeleton data to remove noise in the image, such as background and extraneous objects behind the exerciser. As a result, our proposed method has achieved promising performance in pose classification tasks in an introductory Taekwondo lesson.