Do You Remember? Dense Video Captioning with Cross-Modal Memory Retrieval
- URL: http://arxiv.org/abs/2404.07610v1
- Date: Thu, 11 Apr 2024 09:58:23 GMT
- Title: Do You Remember? Dense Video Captioning with Cross-Modal Memory Retrieval
- Authors: Minkuk Kim, Hyeon Bae Kim, Jinyoung Moon, Jinwoo Choi, Seong Tae Kim,
- Abstract summary: Dense video captioning aims to automatically localize and caption all events within untrimmed video.
We propose a novel framework inspired by the cognitive information processing of humans.
Our model utilizes external memory to incorporate prior knowledge.
- Score: 9.899703354116962
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: There has been significant attention to the research on dense video captioning, which aims to automatically localize and caption all events within untrimmed video. Several studies introduce methods by designing dense video captioning as a multitasking problem of event localization and event captioning to consider inter-task relations. However, addressing both tasks using only visual input is challenging due to the lack of semantic content. In this study, we address this by proposing a novel framework inspired by the cognitive information processing of humans. Our model utilizes external memory to incorporate prior knowledge. The memory retrieval method is proposed with cross-modal video-to-text matching. To effectively incorporate retrieved text features, the versatile encoder and the decoder with visual and textual cross-attention modules are designed. Comparative experiments have been conducted to show the effectiveness of the proposed method on ActivityNet Captions and YouCook2 datasets. Experimental results show promising performance of our model without extensive pretraining from a large video dataset.
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