通过利用深度和适应可解释性来改进视觉问题回答

Amrita Panesar, Fethiye Irmak Dogan, Iolanda Leite
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引用次数: 1

摘要

在人机对话中,机器人能够准确地回答用户的问题,并为他们为什么会得到他们提供的答案提供合适的解释,这是至关重要的。深度是生产更智能的机器人的关键组成部分,因为一些问题可能依赖于场景中的空间关系,仅2D RGB数据是不够的。由于缺乏用于VQA任务的现有深度数据集,我们引入了一个新的数据集VQA- sunrgbd。当我们将我们在RGB- d数据集上提出的模型与单独在RGB数据上的基线VQN网络进行比较时,我们表明我们的模型优于RGB数据集,特别是在与深度相关的问题上,例如询问物体的接近程度和物体之间的相对位置。我们还提供了Grad-CAM激活,以深入了解对深度相关问题的预测,并发现与RGB数据上的Grad-CAM相比,我们的方法产生了更好的视觉解释。据我们所知,这项工作是第一次利用深度和可解释性模块来产生可解释的视觉问答(VQA)系统。
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Improving Visual Question Answering by Leveraging Depth and Adapting Explainability
During human-robot conversation, it is critical for robots to be able to answer users’ questions accurately and provide a suitable explanation for why they arrive at the answer they provide. Depth is a crucial component in producing more intelligent robots that can respond correctly as some questions might rely on spatial relations within the scene, for which 2D RGB data alone would be insufficient. Due to the lack of existing depth datasets for the task of VQA, we introduce a new dataset, VQA-SUNRGBD. When we compare our proposed model on this RGB-D dataset against the baseline VQN network on RGB data alone, we show that ours outperforms, particularly in questions relating to depth such as asking about the proximity of objects and relative positions of objects to one another. We also provide Grad-CAM activations to gain insight regarding the predictions on depth-related questions and find that our method produces better visual explanations compared to Grad-CAM on RGB data. To our knowledge, this work is the first of its kind to leverage depth and an explainability module to produce an explainable Visual Question Answering (VQA) system.
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