S. Sivaprasad, Tanmayee Joshi, Rishabh Agrawal, N. Pedanekar
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引用次数: 17
Abstract
Predicting emotions that movies are designed to evoke, can be useful in entertainment applications such as content personalization, video summarization and ad placement. Multimodal input, primarily audio and video, helps in building the emotional content of a movie. Since the emotion is built over time by audio and video, the temporal context of these modalities is an important aspect in modeling it. In this paper, we use Long Short-Term Memory networks (LSTMs) to model the temporal context in audio-video features of movies. We present continuous emotion prediction results using a multimodal fusion scheme on an annotated dataset of Academy Award winning movies. We report a significant improvement over the state-of-the-art results, wherein the correlation between predicted and annotated values is improved from 0.62 vs 0.84 for arousal, and from 0.29 to 0.50 for valence.
预测电影旨在唤起的情感,在娱乐应用中很有用,比如内容个性化、视频摘要和广告投放。多模式输入,主要是音频和视频,有助于构建电影的情感内容。由于情绪是通过音频和视频随着时间的推移而建立的,因此这些模式的时间背景是建模的一个重要方面。在本文中,我们使用长短期记忆网络(LSTMs)来模拟电影音视频特征中的时间背景。我们使用多模态融合方案在奥斯卡获奖电影的注释数据集上呈现连续的情绪预测结果。我们报告了对最先进结果的显着改进,其中预测值和注释值之间的相关性从唤醒的0.62 vs 0.84提高到效价的0.29到0.50。