Title
Learning to Score Figure Skating Sport Videos
Abstract
AbstractThis paper aims at learning to score the figure skating sports videos. To address this task, we propose a deep architecture that includes two complementary components, i.e., Self-Attentive LSTM and Multi-scale Convolutional Skip LSTM. These two components can efficiently learn the local and global sequential information in each video. Furthermore, we present a large-scale figure skating sports video dataset – FisV dataset. This dataset includes 500 figure skating videos with the average length of 2 minutes and 50 seconds. Each video is annotated by two scores of nine different referees, i.e., Total Element Score(TES) and Total Program Component Score (PCS). Our proposed model is validated on FisV and MIT-skate datasets. The experimental results show the effectiveness of our models in learning to score the figure skating videos. The codes and datasets would be downloaded from https://github.com/loadder/MS_LSTM.git.
Year
DOI
Venue
2020
10.1109/TCSVT.2019.2927118
Periodicals
Keywords
DocType
Volume
Videos, Sports, Task analysis, Deep learning, Convolutional codes, Computational modeling, Three-dimensional displays, Figure skating sport videos, self-attentive LSTM, multi-scale convolutional skip LSTM
Journal
30
Issue
ISSN
Citations 
12
1051-8215
2
PageRank 
References 
Authors
0.39
32
6
Name
Order
Citations
PageRank
Chengming Xu120.39
Yanwei Fu254351.93
Bing Zhang331.09
Zitian Chen4212.45
Yu-Gang Jiang53071152.58
Xiangyang Xue62466154.25