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- SUBHAM MUKHERJEE;
- RAJKUMAR SAINI;
- PRADEEP KUMAR;
- PARTHA PRATIM ROY;
- DEBI P. DOGRA;
- ... 김병규
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0초록
Understanding actions in videos is an important task. It helps in finding the anomalies present in videos such as fights. Detection of fights becomes more crucial when it comes to sports. This paper focuses on finding fight scenes in Hockey sport videos using blur & radon transform and convolutional neural networks (CNNs). First, the local motion within the video frames has been extracted using blur information. Next, fast fourier and radon transform have been applied on the local motion. The video frames with fight scene have been identified using transfer learning with the help of pre-trained deep learning model VGG-Net. Finally, a comparison of the methodology has been performed using feed forward neural networks. Accuracies of 56.00% and 75.00% have been achieved using feed forward neural network and VGG16-Net, respectively.
키워드
- 제목
- Fight Detection in Hockey Videos using Deep Network
- 저자
- SUBHAM MUKHERJEE; RAJKUMAR SAINI; PRADEEP KUMAR; PARTHA PRATIM ROY; DEBI P. DOGRA; 김병규
- 발행일
- 2017-12
- 저널명
- Journal of Multimedia Information System
- 권
- 4
- 호
- 4
- 페이지
- 225 ~ 232