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Locating anchor shots in compression domain based on neural networks

机译:基于神经网络的压缩域中定位锚镜头

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Anchor shots are important elements in news video, and locating them accurately and thoroughly is crucial to parse news video. The paper presents a novel approach, using neural networks, to detect anchor clips. Firstly, a background model is constructed through neural networks learning Then, the trained neural networks classify frames in news video into two classes, i.e. anchor frames and non-anchor frames. At last, based on repeatability and dispersing of anchor shots on the temporal axis, false declarations in the outputs of neural networks are filtered out by clustering. The evaluation experiments, on nine days of news videos, demonstrate the approach is a fast, effective one, with the recall 98.2% and the accuracy 100%.
机译:锚镜头是新闻视频中的重要元素,并准确且彻底地定位它们对于解析新闻视频至关重要。本文呈现了一种新颖的方法,使用神经网络来检测锚夹。首先,通过神经网络学习构建背景模型,然后训练有素的神经网络将新闻视频中的帧分类为两个类,即锚帧和非锚帧。最后,基于时间轴上的锚镜头的可重复性和分散,通过群集滤除神经网络输出中的错误声明。在九天的新闻视频中评估实验证明了这种方法是一种快速,有效的方法,召回了98.2%,准确性为100%。

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