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Unsupervised Extraction of Video Highlights Via Robust Recurrent Auto-encoders

机译:通过强大的复制自动编码器无监督的视频亮点提取视频亮点

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With the growing popularity of short-form video sharing platforms such as Instagram and Vine, there has been an increasing need for techniques that automatically extract highlights from video. Whereas prior works have approached this problem with heuristic rules or supervised learning, we present an unsupervised learning approach that takes advantage of the abundance of user-edited videos on social media websites such as YouTube. Based on the idea that the most significant sub-events within a video class are commonly present among edited videos while less interesting ones appear less frequently, we identify the significant sub-events via a robust recurrent auto-encoder trained on a collection of user-edited videos queried for each particular class of interest. The auto-encoder is trained using a proposed shrinking exponential loss function that makes it robust to noise in the web-crawled training data, and is configured with bidirectional long short term memory (LSTM) [5] cells to better model the temporal structure of highlight segments. Different from supervised techniques, our method can infer highlights using only a set of down-loaded edited videos, without also needing their pre-edited counterparts which are rarely available online. Extensive experiments indicate the promise of our proposed solution in this challenging unsupervised setting.
机译:随着诸如Instagram和Vine等短型视频共享平台的越来越多的普及,越来越需要自动从视频中提取突出显示的技术。然而,在先前的作品已经通过启发式规则或监督学习接近这个问题,我们提出了一种无监督的学习方法,可以利用youtube等社交媒体网站上的丰富的用户编辑视频。基于该想法,视频类中的最重要的子事件通常存在于编辑视频中,而较少的有趣的视频频繁出现,我们通过培训的具有培训的用户 - 培训的强大的复制自动编码器来识别重要的子事件 - 编辑视频查询每个特定的兴趣类。使用建议的缩小指数损耗功能培训自动编码器,使其在Web爬网训练数据中噪声稳健,并且配置了双向短期内存(LSTM)[5]单元格,以更好地模拟时间结构突出显示部分。与监督技术不同,我们的方法可以仅使用一组下载编辑视频推断出亮点,而无需在线需要其预先编辑的对应物。广泛的实验表明,在这一挑战无监督环境中,我们提出的解决方案的承诺。

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