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Technical Report for CVPR 2022 LOVEU AQTC Challenge

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arxiv 2206.14555 v1 pith:5VJWBRPT submitted 2022-06-29 cs.CV cs.AI

Technical Report for CVPR 2022 LOVEU AQTC Challenge

classification cs.CV cs.AI
keywords loveuvideoaqtcchallengecvprplacereporttechnical
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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This technical report presents the 2nd winning model for AQTC, a task newly introduced in CVPR 2022 LOng-form VidEo Understanding (LOVEU) challenges. This challenge faces difficulties with multi-step answers, multi-modal, and diverse and changing button representations in video. We address this problem by proposing a new context ground module attention mechanism for more effective feature mapping. In addition, we also perform the analysis over the number of buttons and ablation study of different step networks and video features. As a result, we achieved the overall 2nd place in LOVEU competition track 3, specifically the 1st place in two out of four evaluation metrics. Our code is available at https://github.com/jaykim9870/ CVPR-22_LOVEU_unipyler.

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