Advances in Mathematical Physics (Jan 2022)

Motion Feature Retrieval in Basketball Match Video Based on Multisource Motion Feature Fusion

  • Biao Ma,
  • Minghui Ji

DOI
https://doi.org/10.1155/2022/9965764
Journal volume & issue
Vol. 2022

Abstract

Read online

Both the human body and its motion are three-dimensional information, while the traditional feature description method of two-person interaction based on RGB video has a low degree of discrimination due to the lack of depth information. According to the respective advantages and complementary characteristics of RGB video and depth video, a retrieval algorithm based on multisource motion feature fusion is proposed. Firstly, the algorithm uses the combination of spatiotemporal interest points and word bag model to represent the features of RGB video. Then, the directional gradient histogram is used to represent the feature of the depth video frame. The statistical features of key frames are introduced to represent the histogram features of depth video. Finally, the multifeature image fusion algorithm is used to fuse the two video features. The experimental results show that multisource feature fusion can greatly improve the retrieval accuracy of motion features.