视觉和语言导航的局部槽位注意

Yifeng Zhuang, Qiang Sun, Yanwei Fu, Lifeng Chen, Xiangyang Xue
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引用次数: 1

摘要

视觉语言导航(VLN)是计算机视觉和自然语言处理领域的研究热点,是一项旨在为通用机器人铺平道路的前沿研究。VLN任务要求智能体在不熟悉的环境中按照自然语言指令导航到目标位置。近年来,基于变压器的模型在VLN任务上取得了显著的进步。由于变压器结构中的注意机制能够更好地整合视觉和语言的模态间和模态内信息。然而,基于电流互感器的模型存在两个问题。1)模型独立处理每个视图,而不考虑对象的完整性。2)在视觉模态的自注意操作过程中,空间上相距较远的景观可以相互交织,而不受明确的限制。这种混合可能会带来额外的噪声,而不是有用的信息。为了解决这些问题,我们提出了1)一个基于槽注意力的模块来整合来自同一对象的分割信息。2)局部注意掩蔽机制限制视觉注意广度。所提出的模块可以很容易地插入到任何VLN架构中,我们使用循环VLN- bert作为我们的基础模型。在R2R数据集上的实验表明,我们的模型达到了最先进的结果。
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Local Slot Attention for Vision and Language Navigation
Vision-and-language navigation (VLN), a frontier study aiming to pave the way for general-purpose robots, has been a hot topic in the computer vision and natural language processing community. The VLN task requires an agent to navigate to a goal location following natural language instructions in unfamiliar environments. Recently, transformer-based models have gained significant improvements on the VLN task. Since the attention mechanism in the transformer architecture can better integrate inter- and intra-modal information of vision and language. However, there exist two problems in current transformer-based models. 1) The models process each view independently without taking the integrity of the objects into account. 2) During the self-attention operation in the visual modality, the views that are spatially distant can be inter-weaved with each other without explicit restriction. This kind of mixing may introduce extra noise instead of useful information. To address these issues, we propose 1) A slot-attention based module to incorporate information from segmentation of the same object. 2) A local attention mask mechanism to limit the visual attention span. The proposed modules can be easily plugged into any VLN architecture and we use the Recurrent VLN-Bert as our base model. Experiments on the R2R dataset show that our model has achieved the state-of-the-art results.
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