HuaizhengZhang/Awsome-Deep-Learning-for-Video-Analysis
Papers, code and datasets about deep learning and multi-modal learning for video analysis
This resource helps researchers and practitioners explore cutting-edge techniques for understanding video content. It organizes papers, datasets, and tools, focusing on how to combine information from multiple sources like video, audio, and text. People working on video analysis projects, especially those involving multimodal data, will find this collection useful for discovering new methods and resources.
836 stars. No commits in the last 6 months.
Use this if you are a researcher or engineer looking for a curated collection of papers, datasets, and tools related to deep learning for video analysis, particularly multimodal approaches.
Not ideal if you are looking for a straightforward, ready-to-use software solution for a specific video analysis task without needing to delve into research papers or multiple tools.
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MIT
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Last pushed
Oct 10, 2021
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