VideoCoT: A Video Chain-of-Thought Dataset with Active Annotation Tool
- URL: http://arxiv.org/abs/2407.05355v1
- Date: Sun, 7 Jul 2024 13:10:23 GMT
- Title: VideoCoT: A Video Chain-of-Thought Dataset with Active Annotation Tool
- Authors: Yan Wang, Yawen Zeng, Jingsheng Zheng, Xiaofen Xing, Jin Xu, Xiangmin Xu,
- Abstract summary: We develop an automatic annotation tool that combines machine and human experts, under the active learning paradigm.
We propose a benchmark based on the collected datasets, which exploits CoT to maximize the complex reasoning capabilities of MLLMs.
- Score: 21.182745175241894
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Multimodal large language models (MLLMs) are flourishing, but mainly focus on images with less attention than videos, especially in sub-fields such as prompt engineering, video chain-of-thought (CoT), and instruction tuning on videos. Therefore, we try to explore the collection of CoT datasets in videos to lead to video OpenQA and improve the reasoning ability of MLLMs. Unfortunately, making such video CoT datasets is not an easy task. Given that human annotation is too cumbersome and expensive, while machine-generated is not reliable due to the hallucination issue, we develop an automatic annotation tool that combines machine and human experts, under the active learning paradigm. Active learning is an interactive strategy between the model and human experts, in this way, the workload of human labeling can be reduced and the quality of the dataset can be guaranteed. With the help of the automatic annotation tool, we strive to contribute three datasets, namely VideoCoT, TopicQA, TopicCoT. Furthermore, we propose a simple but effective benchmark based on the collected datasets, which exploits CoT to maximize the complex reasoning capabilities of MLLMs. Extensive experiments demonstrate the effectiveness our solution.
Related papers
- Needle In A Video Haystack: A Scalable Synthetic Evaluator for Video MLLMs [20.168429351519055]
Video understanding is a crucial next step for multimodal large language models (LMLMs)
We propose VideoNIAH (Video Needle In A Haystack), a benchmark construction framework through synthetic video generation.
We conduct a comprehensive evaluation of both proprietary and open-source models, uncovering significant differences in their video understanding capabilities.
arXiv Detail & Related papers (2024-06-13T17:50:05Z) - CinePile: A Long Video Question Answering Dataset and Benchmark [55.30860239555001]
We present a novel dataset and benchmark, CinePile, specifically designed for authentic long-form video understanding.
Our comprehensive dataset comprises 305,000 multiple-choice questions (MCQs), covering various visual and multimodal aspects.
We fine-tuned open-source Video-LLMs on the training split and evaluated both open-source and proprietary video-centric LLMs on the test split of our dataset.
arXiv Detail & Related papers (2024-05-14T17:59:02Z) - Scaling Up Video Summarization Pretraining with Large Language Models [73.74662411006426]
We introduce an automated and scalable pipeline for generating a large-scale video summarization dataset.
We analyze the limitations of existing approaches and propose a new video summarization model that effectively addresses them.
Our work also presents a new benchmark dataset that contains 1200 long videos each with high-quality summaries annotated by professionals.
arXiv Detail & Related papers (2024-04-04T11:59:06Z) - Momentor: Advancing Video Large Language Model with Fine-Grained Temporal Reasoning [102.54669633984278]
We propose Momentor, a Video-LLM capable of accomplishing fine-grained temporal understanding tasks.
We train Momentor on Moment-10M, enabling it to perform segment-level reasoning and localization.
arXiv Detail & Related papers (2024-02-18T03:04:38Z) - VaQuitA: Enhancing Alignment in LLM-Assisted Video Understanding [63.075626670943116]
We introduce a cutting-edge framework, VaQuitA, designed to refine the synergy between video and textual information.
At the data level, instead of sampling frames uniformly, we implement a sampling method guided by CLIP-score rankings.
At the feature level, we integrate a trainable Video Perceiver alongside a Visual-Query Transformer.
arXiv Detail & Related papers (2023-12-04T19:48:02Z) - VIoTGPT: Learning to Schedule Vision Tools towards Intelligent Video
Internet of Things [35.97876618109385]
Video Internet of Things (VIoT) has shown full potential in collecting an unprecedented volume of video data.
To address the challenges posed by the fine-grained and interrelated vision tool usage of VIoT, we build VIoTGPT.
arXiv Detail & Related papers (2023-12-01T07:50:53Z) - Look, Remember and Reason: Grounded reasoning in videos with language
models [5.3445140425713245]
Multi-temporal language models (LM) have recently shown promising performance in high-level reasoning tasks on videos.
We propose training an LM end-to-end on low-level surrogate tasks, including object detection, re-identification, tracking, to endow the model with the required low-level visual capabilities.
We demonstrate the effectiveness of our framework on diverse visual reasoning tasks from the ACRE, CATER, Something-Else and STAR datasets.
arXiv Detail & Related papers (2023-06-30T16:31:14Z) - VideoLLM: Modeling Video Sequence with Large Language Models [70.32832021713864]
Existing video understanding models are often task-specific and lack a comprehensive capability of handling diverse tasks.
We propose a novel framework called VideoLLM that leverages the sequence reasoning capabilities of pre-trained LLMs.
VideoLLM incorporates a carefully designed Modality and Semantic Translator, which convert inputs from various modalities into a unified token sequence.
arXiv Detail & Related papers (2023-05-22T17:51:22Z) - NoisyActions2M: A Multimedia Dataset for Video Understanding from Noisy
Labels [33.659146748289444]
We create a benchmark dataset consisting of around 2 million videos with associated user-generated annotations and other meta information.
We show how a network pretrained on the proposed dataset can help against video corruption and label noise in downstream datasets.
arXiv Detail & Related papers (2021-10-13T16:12:18Z) - Video Understanding as Machine Translation [53.59298393079866]
We tackle a wide variety of downstream video understanding tasks by means of a single unified framework.
We report performance gains over the state-of-the-art on several downstream tasks including video classification (EPIC-Kitchens), question answering (TVQA), captioning (TVC, YouCook2, and MSR-VTT)
arXiv Detail & Related papers (2020-06-12T14:07:04Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.