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Main Authors: Li, Ping, Wang, Tao, Zhao, Xinkui, Xu, Xianghua, Song, Mingli
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2411.04059
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author Li, Ping
Wang, Tao
Zhao, Xinkui
Xu, Xianghua
Song, Mingli
author_facet Li, Ping
Wang, Tao
Zhao, Xinkui
Xu, Xianghua
Song, Mingli
contents Video captioning generate a sentence that describes the video content. Existing methods always require a number of captions (\eg, 10 or 20) per video to train the model, which is quite costly. In this work, we explore the possibility of using only one or very few ground-truth sentences, and introduce a new task named few-supervised video captioning. Specifically, we propose a few-supervised video captioning framework that consists of lexically constrained pseudo-labeling module and keyword-refined captioning module. Unlike the random sampling in natural language processing that may cause invalid modifications (\ie, edit words), the former module guides the model to edit words using some actions (\eg, copy, replace, insert, and delete) by a pretrained token-level classifier, and then fine-tunes candidate sentences by a pretrained language model. Meanwhile, the former employs the repetition penalized sampling to encourage the model to yield concise pseudo-labeled sentences with less repetition, and selects the most relevant sentences upon a pretrained video-text model. Moreover, to keep semantic consistency between pseudo-labeled sentences and video content, we develop the transformer-based keyword refiner with the video-keyword gated fusion strategy to emphasize more on relevant words. Extensive experiments on several benchmarks demonstrate the advantages of the proposed approach in both few-supervised and fully-supervised scenarios. The code implementation is available at https://github.com/mlvccn/PKG_VidCap
format Preprint
id arxiv_https___arxiv_org_abs_2411_04059
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Pseudo-labeling with Keyword Refining for Few-Supervised Video Captioning
Li, Ping
Wang, Tao
Zhao, Xinkui
Xu, Xianghua
Song, Mingli
Computer Vision and Pattern Recognition
Video captioning generate a sentence that describes the video content. Existing methods always require a number of captions (\eg, 10 or 20) per video to train the model, which is quite costly. In this work, we explore the possibility of using only one or very few ground-truth sentences, and introduce a new task named few-supervised video captioning. Specifically, we propose a few-supervised video captioning framework that consists of lexically constrained pseudo-labeling module and keyword-refined captioning module. Unlike the random sampling in natural language processing that may cause invalid modifications (\ie, edit words), the former module guides the model to edit words using some actions (\eg, copy, replace, insert, and delete) by a pretrained token-level classifier, and then fine-tunes candidate sentences by a pretrained language model. Meanwhile, the former employs the repetition penalized sampling to encourage the model to yield concise pseudo-labeled sentences with less repetition, and selects the most relevant sentences upon a pretrained video-text model. Moreover, to keep semantic consistency between pseudo-labeled sentences and video content, we develop the transformer-based keyword refiner with the video-keyword gated fusion strategy to emphasize more on relevant words. Extensive experiments on several benchmarks demonstrate the advantages of the proposed approach in both few-supervised and fully-supervised scenarios. The code implementation is available at https://github.com/mlvccn/PKG_VidCap
title Pseudo-labeling with Keyword Refining for Few-Supervised Video Captioning
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2411.04059