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EgoTextVQA: Towards Egocentric Scene-Text Aware Video Question Answering

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arxiv 2502.07411 v2 pith:DNQJQOXW submitted 2025-02-11 cs.CV cs.MM

EgoTextVQA: Towards Egocentric Scene-Text Aware Video Question Answering

classification cs.CV cs.MM
keywords egotextvqaegocentricscene-textassistanceawaremodelsquestionsreasoning
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We introduce EgoTextVQA, a novel and rigorously constructed benchmark for egocentric QA assistance involving scene text. EgoTextVQA contains 1.5K ego-view videos and 7K scene-text aware questions that reflect real user needs in outdoor driving and indoor house-keeping activities. The questions are designed to elicit identification and reasoning on scene text in an egocentric and dynamic environment. With EgoTextVQA, we comprehensively evaluate 10 prominent multimodal large language models. Currently, all models struggle, and the best results (Gemini 1.5 Pro) are around 33\% accuracy, highlighting the severe deficiency of these techniques in egocentric QA assistance. Our further investigations suggest that precise temporal grounding and multi-frame reasoning, along with high resolution and auxiliary scene-text inputs, are key for better performance. With thorough analyses and heuristic suggestions, we hope EgoTextVQA can serve as a solid testbed for research in egocentric scene-text QA assistance. Our dataset is released at: https://github.com/zhousheng97/EgoTextVQA.

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