Semi-Supervised First-Person Activity Recognition in Body-Worn Video
Chen, Honglin, Li, Hao, Song, Alexander, Haberland, Matt, Akar, Osman, Dhillon, Adam, Zhou, Tiankuang, Bertozzi, Andrea L., Brantingham, P. Jeffrey
Body-worn cameras are now commonly used for logging daily life, sports, and law enforcement activities, creating a large volume of archived footage. This paper studies the problem of classifying frames of footage according to the activity of the camera-wearer with an emphasis on application to real-world police body-worn video. Real-world datasets pose a different set of challenges from existing egocentric vision datasets: the amount of footage of different activities is unbalanced, the data contains personally identifiable information, and in practice it is difficult to provide substantial training footage for a supervised approach. We address these challenges by extracting features based exclusively on motion information then segmenting the video footage using a semi-supervised classification algorithm. On publicly available datasets, our method achieves results comparable to, if not better than, supervised and/or deep learning methods using a fraction of the training data. It also shows promising results on real-world police body-worn video.
Apr-18-2019
- Country:
- Asia (0.93)
- North America > United States
- California > Los Angeles County > Los Angeles (0.28)
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- Research Report > New Finding (0.46)
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