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Memorable and rich video summarization

机译:难忘而丰富的视频摘要

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摘要

Video summarization can facilitate rapid browsing and efficient video indexing in many applications. A good summary should maintain the semantic interestingness and diversity of the original video. While many previous methods extracted key frames based on low-level features, this study proposes Memorability-Entropy-based video summarization. The proposed method focuses on creating semantically interesting summaries based on image memorability. Further, image entropy is introduced to maintain the diversity of the summary. In the proposed framework, perceptual hashing-based mutual information (MI) is used for shot segmentation. Then, we use a large annotated image memorability data set to fine-tune Hybrid-AlexNet. We predict the memorability score by using the fine-tuned deep network and calculate the entropy value of the images. The frame with the maximum memorability score and entropy value in each shot is selected to constitute the video summary. Finally, our method is evaluated on a benchmark dataset, which comes with five human-created summaries. When evaluating our method, we find it generates high-quality results, comparable to human-created summaries and conventional methods. (C) 2016 Elsevier Inc. All rights reserved.
机译:视频摘要可以在许多应用中促进快速浏览和有效的视频索引。一个好的摘要应该保持原始视频的语义趣味性和多样性。尽管许多先前的方法基于低级特征提取关键帧,但本研究提出了基于记忆熵的视频摘要。所提出的方法着重于基于图像记忆性创建语义上有趣的摘要。此外,引入图像熵以保持摘要的多样性。在提出的框架中,基于感知哈希的互信息(MI)用于镜头分割。然后,我们使用大批注的图像记忆性数据集来微调Hybrid-AlexNet。我们使用微调的深度网络预测记忆力得分,并计算图像的熵值。选择在每个镜头中具有最大记忆力得分和熵值的帧以构成视频摘要。最后,我们在基准数据集上评估了我们的方法,该数据集包含五个人为创建的摘要。在评估我们的方法时,我们发现它可以产生高质量的结果,可与人工创建的摘要和常规方法相比。 (C)2016 Elsevier Inc.保留所有权利。

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