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Deep Learning based Beat Event Detection in Action Movie Franchises

机译:动作电影系列中基于深度学习的节拍事件检测

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Automatic understanding and interpretation of movies can be used in a variety of ways to semantically manage the massive volumes of movies data. "Action Movie Franchises" dataset is a collection of twenty Hollywood action movies from five famous franchises with ground truth annotations at shot and beat level of each movie. In this dataset, the annotations are provided for eleven semantic beat categories. In this work, we propose a deep learning based method to classify shots and beat-events on this dataset. The training dataset for each of the eleven beat categories is developed and then a Convolution Neural Network is trained. After finding the shot boundaries, key frames are extracted for each shot and then three classification labels are assigned to each key frame. The classification labels for each of the key frames in a particular shot are then used to assign a unique label to each shot. A simple sliding window based method is then used to group adjacent shots having the same label in order to find a particular beat event. The results of beat event classification are presented based on criteria of precision, recall, and F-measure. The results are compared with the existing technique and significant improvements are recorded.
机译:电影的自动理解和解释可以多种方式用于语义管理大量电影数据。 “动作电影特许经营权”数据集是来自五个著名特许经营权的20部好莱坞动作电影的集合,在每部电影的镜头和拍子级别都具有地面真实性注释。在此数据集中,为11个语义节拍类别提供了注释。在这项工作中,我们提出了一种基于深度学习的方法来对该数据集上的镜头和拍子事件进行分类。开发了11个拍子类别中每个类别的训练数据集,然后训练了卷积神经网络。找到镜头边界后,为每个镜头提取关键帧,然后将三个分类标签分配给每个关键帧。然后使用特定镜头中每个关键帧的分类标签为每个镜头分配唯一的标签。然后使用一种简单的基于滑动窗口的方法对具有相同标签的相邻镜头进行分组,以查找特定的节拍事件。节拍事件分类的结果是根据精度,召回率和F量度的标准给出的。将结果与现有技术进行比较,并记录了重大改进。

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