Given an untrimmed video, temporal sentence grounding (TSG) aims to locate a target moment semantically according to a sentence query. Although previous respectable works have made decent success, they only focus on high-level visual features extracted from the consecutive decoded frames and fail to handle the compressed videos for query modelling, suffering from insufficient representation capability and significant computational complexity during training and testing. In this paper, we pose a new setting, compressed-domain TSG, which directly utilizes compressed videos rather than fully-decompressed frames as the visual input. To handle the raw video bit-stream input, we propose a novel Three-branch Compressed-domain Spatial-temporal Fusion (TCSF) framework, which extracts and aggregates three kinds of low-level visual features (I-frame, motion vector and residual features) for effective and efficient grounding. Particularly, instead of encoding the whole decoded frames like previous works, we capture the appearance representation by only learning the I-frame feature to reduce delay or latency. Besides, we explore the motion information not only by learning the motion vector feature, but also by exploring the relations of neighboring frames via the residual feature. In this way, a three-branch spatial-temporal attention layer with an adaptive motion-appearance fusion module is further designed to extract and aggregate both appearance and motion information for the final grounding. Experiments on three challenging datasets shows that our TCSF achieves better performance than other state-of-the-art methods with lower complexity.
翻译:鉴于一个未剪接的视频,时间判决基础(TSG)旨在根据句子查询找到一个目标时刻的音义。虽然以前令人敬佩的工作取得了体面的成功,但只是侧重于从连续的解码框架中提取的高层次视觉特征,未能处理用于查询建模的压缩视频(I-框架、运动矢量和剩余特征),在培训和测试期间缺乏足够的代表性和大量计算复杂性。在本文中,我们提出了一个新的设置,即压缩版TSG,直接使用压缩视频而不是完全淡化的框作为视觉输入。为了处理原始视频的位子流输入,我们提议了一个全新的三层组合组合组合(TTCSF)框架,这个框架将提取和汇总三种低层次的视觉特征(I-框架、运动矢量和残余特征),用于有效和高效的地面定位。我们没有像以前的工作那样将整个解码框架进行编码,而是通过学习I-框架特性来减少延迟或延缓度。此外,我们不仅通过学习运动的三层组合组合组合组合(TTC)框架(TTC)框架(TTC)框架)框架(Timal-liental-tration-tration-tration-traction-traction-traction-traction-traction-traction-traction-traction-traction-traction-traction-traction-tracational laisl)框架,而且还通过探索一个更好的三层(Slifol-traction-traction-traction-traction-traction-traction-laislisml-traction-lautal-ladal-traction-traction-traction-traction-traction-traction-traction-traction-traction-tracism-laut-ladal-ladal-traction-traction-ladal-deal-deal-deal-ladal-ladal-ladal-ladal-ladal-ladal-ladal-ladal-ladal-ladal-ladal-ladal-lad-lad-lad-lad-lad-lad-lad-lad-lad-lad-ladal-lad-lad-lad-lad-lad-</s>