Early and late integration of audio features for automatic video description

Chiori Hori, Takaaki Hori, Tim K. Marks, J. Hershey
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引用次数: 12

Abstract

This paper presents our approach to improve video captioning by integrating audio and video features. Video captioning is the task of generating a textual description to describe the content of a video. State-of-the-art approaches to video captioning are based on sequence-to-sequence models, in which a single neural network accepts sequential images and audio data, and outputs a sequence of words that best describe the input data in natural language. The network thus learns to encode the video input into an intermediate semantic representation, which can be useful in applications such as multimedia indexing, automatic narration, and audio-visual question answering. In our prior work, we proposed an attention-based multi-modal fusion mechanism to integrate image, motion, and audio features, where the multiple features are integrated in the network. Here, we apply hypothesis-level integration based on minimum Bayes-risk (MBR) decoding to further improve the caption quality, focusing on well-known evaluation metrics (BLEU and METEOR scores). Experiments with the YouTube2Text and MSR-VTT datasets demonstrate that combinations of early and late integration of multimodal features significantly improve the audio-visual semantic representation, as measured by the resulting caption quality. In addition, we compared the performance of our method using two different types of audio features: MFCC features, and the audio features extracted using SoundNet, which was trained to recognize objects and scenes from videos using only the audio signals.
早期和后期集成音频功能,用于自动视频描述
本文提出了一种通过整合音频和视频特征来改进视频字幕的方法。视频字幕是生成文本描述来描述视频内容的任务。最先进的视频字幕方法基于序列到序列模型,其中单个神经网络接受序列图像和音频数据,并输出最能描述自然语言输入数据的单词序列。因此,网络学习将视频输入编码为中间语义表示,这在多媒体索引、自动叙述和视听问答等应用中很有用。在我们之前的工作中,我们提出了一种基于注意力的多模态融合机制来整合图像、运动和音频特征,其中多个特征集成在网络中。在这里,我们应用基于最小贝叶斯风险(MBR)解码的假设级集成来进一步提高标题质量,重点关注众所周知的评估指标(BLEU和METEOR分数)。使用YouTube2Text和MSR-VTT数据集进行的实验表明,多模态特征的早期和晚期集成组合显著改善了视听语义表示,由此产生的标题质量可以衡量。此外,我们使用两种不同类型的音频特征来比较我们的方法的性能:MFCC特征和使用SoundNet提取的音频特征,SoundNet被训练成仅使用音频信号来识别视频中的物体和场景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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