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arxiv 2403.17545 v1 pith:LUWYOS3X submitted 2024-03-26 cs.CL cs.CV

A Gaze-grounded Visual Question Answering Dataset for Clarifying Ambiguous Japanese Questions

classification cs.CL cs.CV
keywords informationgazegazevqaoftenquestionssomevisualambiguities
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Situated conversations, which refer to visual information as visual question answering (VQA), often contain ambiguities caused by reliance on directive information. This problem is exacerbated because some languages, such as Japanese, often omit subjective or objective terms. Such ambiguities in questions are often clarified by the contexts in conversational situations, such as joint attention with a user or user gaze information. In this study, we propose the Gaze-grounded VQA dataset (GazeVQA) that clarifies ambiguous questions using gaze information by focusing on a clarification process complemented by gaze information. We also propose a method that utilizes gaze target estimation results to improve the accuracy of GazeVQA tasks. Our experimental results showed that the proposed method improved the performance in some cases of a VQA system on GazeVQA and identified some typical problems of GazeVQA tasks that need to be improved.

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  1. StreamGaze: Gaze-Guided Temporal Reasoning and Proactive Understanding in Streaming Videos

    cs.CV 2025-12 unverdicted novelty 7.0

    StreamGaze is a new benchmark and QA generation pipeline that measures how well MLLMs leverage gaze trajectories for temporal reasoning and proactive intention prediction in streaming egocentric videos.