Explore Multi-Step Reasoning in Video Question Answering

Yahong Han
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引用次数: 44

Abstract

This invited talk is a repeated but more detailed talk about the paper which is accepted by ACM-MM 2018: Video question answering (VideoQA) always involves visual reasoning. When answering questions composing of multiple logic correlations, models need to perform multi-step reasoning. In this paper, we formulate multi-step reasoning in VideoQA as a new task to answer compositional and logical structured questions based on video content. Existing VideoQA datasets are inadequate as benchmarks for the multi-step reasoning due to limitations as lacking logical structure and having language biases. Thus we design a system to automatically generate a large-scale dataset, namely SVQA (Synthetic Video Question Answering). Compared with other VideoQA datasets, SVQA contains exclusively long and structured questions with various spatial and temporal relations between objects. More importantly, questions in SVQA can be decomposed into human readable logical tree or chain layouts, each node of which represents a sub-task requiring a reasoning operation such as comparison or arithmetic. Towards automatic question answering in SVQA, we develop a new VideoQA model. Particularly, we construct a new attention module, which contains spatial attention mechanism to address crucial and multiple logical sub-tasks embedded in questions, as well as a refined GRU called ta-GRU (temporal-attention GRU) to capture the long-term temporal dependency and gather complete visual cues. Experimental results show the capability of multi-step reasoning of SVQA and the effectiveness of our model when compared with other existing models.
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探索视频问答中的多步骤推理
本次特邀演讲是对ACM-MM 2018接受的论文的重复但更详细的讨论:视频问答(VideoQA)总是涉及视觉推理。在回答由多个逻辑关联组成的问题时,模型需要执行多步推理。在本文中,我们将VideoQA中的多步推理作为一种新的任务来回答基于视频内容的组合性和逻辑性结构化问题。由于缺乏逻辑结构和语言偏差等限制,现有的VideoQA数据集不足以作为多步骤推理的基准。因此,我们设计了一个自动生成大规模数据集的系统,即SVQA (Synthetic Video Question answer)。与其他VideoQA数据集相比,SVQA只包含具有对象之间各种时空关系的长而结构化的问题。更重要的是,SVQA中的问题可以分解为人类可读的逻辑树或链布局,其中的每个节点表示需要进行比较或算术等推理操作的子任务。针对SVQA中的自动问答问题,我们开发了一种新的VideoQA模型。特别是,我们构建了一个新的注意模块,该模块包含空间注意机制,以解决嵌入在问题中的关键和多个逻辑子任务,以及一个改进的GRU,称为ta-GRU(时间-注意GRU),以捕获长期时间依赖性并收集完整的视觉线索。实验结果表明了SVQA的多步推理能力和该模型与其他已有模型的有效性。
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Session details: Session 2: Challenge Track Proceedings of the 1st Workshop and Challenge on Comprehensive Video Understanding in the Wild Multi-task Joint Learning for Videos in the Wild Deep Video Understanding: Representation Learning, Action Recognition, and Language Generation Video Understanding via Convolutional Temporal Pooling Network and Multimodal Feature Fusion
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