Unsupervised Object-Level Video Summarization with Online Motion Auto-Encoder

@article{Zhang2018UnsupervisedOV,
  title={Unsupervised Object-Level Video Summarization with Online Motion Auto-Encoder},
  author={Yujia Zhang and Xiaodan Liang and Dingwen Zhang and Min Tan and Eric P. Xing},
  journal={CoRR},
  year={2018},
  volume={abs/1801.00543}
}
Unsupervised video summarization plays an important role on digesting, browsing, and searching the ever-growing videos every day, and the underlying fine-grained semantic and motion information (i.e., objects of interest and their key motions) in online videos has been barely touched. In this paper, we investigate a pioneer research direction towards the fine-grained unsupervised object-level video summarization. It can be distinguished from existing pipelines in two aspects: extracting key… CONTINUE READING
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