CVApr 24, 2019

A General Framework for Edited Video and Raw Video Summarization

arXiv:1904.10669v1115 citations
Originality Highly original
AI Analysis

This work addresses video summarization for applications like content analysis and retrieval, but it is incremental as it builds on existing models with a hybrid approach.

The authors tackled video summarization for both edited and raw videos by designing a framework that models importance, representativeness, diversity, and storyness, with supervised learning of property-weights and a training set mixing both video types, achieving verified effectiveness on three datasets.

In this paper, we build a general summarization framework for both of edited video and raw video summarization. Overall, our work can be divided into three folds: 1) Four models are designed to capture the properties of video summaries, i.e., containing important people and objects (importance), representative to the video content (representativeness), no similar key-shots (diversity) and smoothness of the storyline (storyness). Specifically, these models are applicable to both edited videos and raw videos. 2) A comprehensive score function is built with the weighted combination of the aforementioned four models. Note that the weights of the four models in the score function, denoted as property-weight, are learned in a supervised manner. Besides, the property-weights are learned for edited videos and raw videos, respectively. 3) The training set is constructed with both edited videos and raw videos in order to make up the lack of training data. Particularly, each training video is equipped with a pair of mixing-coefficients which can reduce the structure mess in the training set caused by the rough mixture. We test our framework on three datasets, including edited videos, short raw videos and long raw videos. Experimental results have verified the effectiveness of the proposed framework.

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