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Exploiting Visual-Audio-Textual Characteristics for Automatic TV Commercial Block Detection and Segmentation

机译:利用可视音频文本特性进行自动电视广告块检测和分段

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摘要

Automatic TV commercial block detection (CBD) and commercial block segmentation (CBS) are two key components of a smart commercial digesting system. In this paper, we focus our research on CBD and CBS by the means of collaborative exploitation of visual-audio-textual characteristics embedded in commercials. Rather than utilizing exclusively visual-audio characteristics like most previous works, an abundance of textual characteristics associated with commercials are fully exploited. Additionally, Tri-AdaBoost, an interactive ensemble learning manner, is proposed to form a consolidated semantic fusion across visual, audio, and textual characteristics. In order to segment a detected commercial block into multiple individual commercials, additional informative descriptors including textual characteristics are introduced to boost the robustness in the detection of frame marked with product information (FMPI). Together with the characteristics of audio spectral variation pointer and silent position, FMPI can provide a kind of complementary representation architecture to model the similarity of intra-commercial and the dissimilarity of inter-commercial. Experiments are conducted on a large video dataset from both China central television (CCTV) channels and TRECVID'05, and promising experimental results show the effectiveness of the proposed scheme.
机译:自动电视广告块检测(CBD)和广告块分割(CBS)是智能广告摘要系统的两个关键组成部分。在本文中,我们通过协同开发嵌入在广告中的视听文本特性,将研究重点放在CBD和CBS上。与其像大多数以前的作品一样,没有专门利用视觉音频特性,而是充分利用了与广告相关的大量文字特性。此外,提出了Tri-AdaBoost,一种交互式的集成学习方法,以形成跨视觉,音频和文本特征的合并语义融合。为了将检测到的广告块分割成多个单独的广告,引入了包括文本特征在内的其他信息描述符,以增强检测带有产品信息(FMPI)的帧时的鲁棒性。 FMPI结合音频频谱变化指针和静音位置的特性,可以提供一种互补的表示体系结构,以对商业内部相似性和商业之间相似性进行建模。在来自中央电视台(CCTV)频道和TRECVID'05的大型视频数据集上进行了实验,有希望的实验结果证明了该方案的有效性。

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