pytorch implementation of video captioning
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Updated
Aug 19, 2019 - Python
pytorch implementation of video captioning
X-modaler is a versatile and high-performance codebase for cross-modal analytics(e.g., image captioning, video captioning, vision-language pre-training, visual question answering, visual commonsense reasoning, and cross-modal retrieval).
This repository contains the code for a video captioning system inspired by Sequence to Sequence -- Video to Text. This system takes as input a video and generates a caption in English describing the video.
Video to Text: Natural language description generator for some given video. [Video Captioning]
Machine Learning and having it Deep and Structured (MLDS) in 2018 spring
Attention Bidirectional Video Recurrent Net
[ACL 2020] PyTorch code for MART: Memory-Augmented Recurrent Transformer for Coherent Video Paragraph Captioning
🎬 Video Captioning: ICCV '15 paper implementation
这是一个基于Pytorch平台、Transformer框架实现的视频描述生成 (Video Captioning) 深度学习模型。 视频描述生成任务指的是:输入一个视频,输出一句描述整个视频内容的文字(前提是视频较短且可以用一句话来描述)。本repo主要目的是帮助视力障碍者欣赏网络视频、感知周围环境,促进“无障碍视频”的发展。
[NeurIPS 2023 D&B] VidChapters-7M: Video Chapters at Scale
A PyTorch implementation of state of the art video captioning models from 2015-2019 on MSVD and MSRVTT datasets.
What and How Well You Performed? A Multitask Learning Approach to Action Quality Assessment [CVPR 2019]
Generating video descriptions using deep learning in Keras
Auto transcribe tool based on whisper
Source code for Delving Deeper into the Decoder for Video Captioning
Summary about Video-to-Text datasets. This repository is part of the review paper *Bridging Vision and Language from the Video-to-Text Perspective: A Comprehensive Review*
Video captioning baseline models on Video2Commonsense Dataset.
Generating paragraph captions for videos
CrossCLR: Cross-modal Contrastive Learning For Multi-modal Video Representations, ICCV 2021
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