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Gaze Aware Deep Learning Model for Video Summarization

机译:注视感知深度学习模型,用于视频汇总

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Video summarization is an ideal tool for skimming videos. Previous computational models extract explicit information from the input video, such as visual appearance, motion or audio information, in order to generate informative summaries. Eye gaze information, which is an implicit clue, has proved useful for indicating important content and the viewer's interest. In this paper, we propose a novel gaze-aware deep learning model for video summarization. In our model, the position and velocity of the observers' raw eye movements are processed by the deep neural network to indicate the users' preferences. Experiments on two widely used video summarization datasets show that our model is more proficient than state-of-the-art methods in summarizing video for characterizing general preferences as well as for personal preferences. The results provide an innovative and improved algorithm for using gaze information in video summarization.
机译:视频摘要是用于浏览视频的理想工具。先前的计算模型从输入视频中提取显式信息,例如视觉外观,运动或音频信息,以便生成信息摘要。事实证明,视线信息是一个隐含的线索,它对于指示重要的内容和观看者的兴趣非常有用。在本文中,我们提出了一种新颖的注视感知深度学习模型,用于视频摘要。在我们的模型中,观察者原始眼睛运动的位置和速度由深度神经网络处理,以指示用户的偏好。在两个广泛使用的视频摘要数据集上进行的实验表明,我们的模型在总结视频以表征一般喜好和个人喜好方面比最先进的方法更为熟练。结果提供了一种创新和改进的算法,用于在视频摘要中使用凝视信息。

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