通过轨迹结构化定位的可解释视频字幕

X. Wu, Guanbin Li, Qingxing Cao, Qingge Ji, Liang Lin
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引用次数: 55

摘要

利用自然语言对开放域视频进行自动描述是人工智能领域研究的热点。大多数现有方法简单地借鉴图像字幕的思想,从全局图像特征的集合中获得紧凑的视频表示,然后馈送到RNN解码器,该解码器输出可变长度的句子。然而,在全局视频表示的情况下,生成器不仅很难在不同的时间集中在特定的突出对象上,更困难的是捕获细粒度的运动信息和运动实例之间的关系,以便进行更微妙的语言描述。在本文中,我们提出了一个轨迹结构化注意编码器-解码器(TSA-ED)神经网络框架,该框架通过结构化注意机制在轨迹层面整合局部时空表征来实现更精细的视频字幕。我们提出的方法基于基于lstm的编码器-解码器框架,该框架结合了注意力建模方案,自适应学习视频中句子结构与运动物体之间的相关性,从而在解码阶段生成更准确和细致的语句描述。实验结果表明,基于轨迹聚类的特征表示和结构化注意机制能够有效获取视频中的局部运动信息,有助于生成更细粒度的视频描述,并在知名的Charades和MSVD数据集上达到最先进的性能。
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Interpretable Video Captioning via Trajectory Structured Localization
Automatically describing open-domain videos with natural language are attracting increasing interest in the field of artificial intelligence. Most existing methods simply borrow ideas from image captioning and obtain a compact video representation from an ensemble of global image feature before feeding to an RNN decoder which outputs a sentence of variable length. However, it is not only arduous for the generator to focus on specific salient objects at different time given the global video representation, it is more formidable to capture the fine-grained motion information and the relation between moving instances for more subtle linguistic descriptions. In this paper, we propose a Trajectory Structured Attentional Encoder-Decoder (TSA-ED) neural network framework for more elaborate video captioning which works by integrating local spatial-temporal representation at trajectory level through structured attention mechanism. Our proposed method is based on a LSTM-based encoder-decoder framework, which incorporates an attention modeling scheme to adaptively learn the correlation between sentence structure and the moving objects in videos, and consequently generates more accurate and meticulous statement description in the decoding stage. Experimental results demonstrate that the feature representation and structured attention mechanism based on the trajectory cluster can efficiently obtain the local motion information in the video to help generate a more fine-grained video description, and achieve the state-of-the-art performance on the well-known Charades and MSVD datasets.
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