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Video Summarization with Long Short-term Memory

About

We propose a novel supervised learning technique for summarizing videos by automatically selecting keyframes or key subshots. Casting the problem as a structured prediction problem on sequential data, our main idea is to use Long Short-Term Memory (LSTM), a special type of recurrent neural networks to model the variable-range dependencies entailed in the task of video summarization. Our learning models attain the state-of-the-art results on two benchmark video datasets. Detailed analysis justifies the design of the models. In particular, we show that it is crucial to take into consideration the sequential structures in videos and model them. Besides advances in modeling techniques, we introduce techniques to address the need of a large number of annotated data for training complex learning models. There, our main idea is to exploit the existence of auxiliary annotated video datasets, albeit heterogeneous in visual styles and contents. Specifically, we show domain adaptation techniques can improve summarization by reducing the discrepancies in statistical properties across those datasets.

Ke Zhang, Wei-Lun Chao, Fei Sha, Kristen Grauman• 2016

Related benchmarks

TaskDatasetResultRank
Video SummarizationTVSum
F-Measure59.6
213
Video SummarizationSumMe
F1 Score (Avg)42.9
130
Video SummarizationTVSum
Kendall's Tau0.042
55
Video SummarizationTVSum (test)
F-score0.596
47
Video SummarizationTVSum Canonical
F-Score54.7
39
Video SummarizationSumMe (test)
F-score42.9
35
Video SummarizationSumMe (various)
F-score41.6
35
Highlight DetectionTVSum
VT41.1
34
Video SummarizationTVSum (Augmented)
F-score59.6
33
Video SummarizationSumMe (Augmented)
F-score42.9
33
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