平衡用于监控视频暴力检测的联合学习的准确性和训练时间:神经网络架构研究

IF 1.2 3区 计算机科学 Q4 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Journal of Computer Science and Technology Pub Date : 2024-09-13 DOI:10.1007/s11390-024-3702-7
Quentin Pajon, Swan Serre, Hugo Wissocq, Léo Rabaud, Siba Haidar, Antoun Yaacoub
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引用次数: 0

摘要

本文对视频中的暴力检测领域进行了原创性研究,针对联合学习环境的独特挑战引入了一种创新方法。这项研究利用从基准视频数据集中提取的时空特征,对机器学习技术进行了全面探索。与传统方法明显不同的是,我们引入了一种新颖的架构--"Diff Gated "网络,旨在简化预处理和训练,同时提高准确性。我们对超级收敛和迁移学习等先进机器学习技术的探索,拓展了联合学习的视野,提供了更广泛的实际应用。此外,我们的研究还介绍了一种将集中式数据集无缝适配到联合学习环境中的方法,弥合了传统机器学习和联合学习方法之间的差距。这项研究的成果是暴力侦测领域的一个显著进步,我们的联合学习模型一直优于最先进的模型,彰显了我们所做贡献的变革潜力。这项工作标志着我们在应用机器学习技术应对重大社会挑战方面迈出了重要一步。
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Balancing Accuracy and Training Time in Federated Learning for Violence Detection in Surveillance Videos: A Study of Neural Network Architectures

This paper presents an original investigation into the domain of violence detection in videos, introducing an innovative approach tailored to the unique challenges of a federated learning environment. The study encompasses a comprehensive exploration of machine learning techniques, leveraging spatio-temporal features extracted from benchmark video datasets. In a notable departure from conventional methodologies, we introduce a novel architecture, the “Diff Gated” network, designed to streamline preprocessing and training while simultaneously enhancing accuracy. Our exploration of advanced machine learning techniques, such as super-convergence and transfer learning, expands the horizons of federated learning, offering a broader range of practical applications. Moreover, our research introduces a method for seamlessly adapting centralized datasets to the federated learning context, bridging the gap between traditional machine learning and federated learning approaches. The outcome of this study is a remarkable advancement in the field of violence detection, with our federated learning model consistently outperforming state-of-the-art models, underscoring the transformative potential of our contributions. This work represents a significant step forward in the application of machine learning techniques to critical societal challenges.

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来源期刊
Journal of Computer Science and Technology
Journal of Computer Science and Technology 工程技术-计算机:软件工程
CiteScore
4.00
自引率
0.00%
发文量
2255
审稿时长
9.8 months
期刊介绍: Journal of Computer Science and Technology (JCST), the first English language journal in the computer field published in China, is an international forum for scientists and engineers involved in all aspects of computer science and technology to publish high quality and refereed papers. Papers reporting original research and innovative applications from all parts of the world are welcome. Papers for publication in the journal are selected through rigorous peer review, to ensure originality, timeliness, relevance, and readability. While the journal emphasizes the publication of previously unpublished materials, selected conference papers with exceptional merit that require wider exposure are, at the discretion of the editors, also published, provided they meet the journal''s peer review standards. The journal also seeks clearly written survey and review articles from experts in the field, to promote insightful understanding of the state-of-the-art and technology trends. Topics covered by Journal of Computer Science and Technology include but are not limited to: -Computer Architecture and Systems -Artificial Intelligence and Pattern Recognition -Computer Networks and Distributed Computing -Computer Graphics and Multimedia -Software Systems -Data Management and Data Mining -Theory and Algorithms -Emerging Areas
期刊最新文献
Balancing Accuracy and Training Time in Federated Learning for Violence Detection in Surveillance Videos: A Study of Neural Network Architectures A Survey of Multimodal Controllable Diffusion Models A Survey of LLM Datasets: From Autoregressive Model to AI Chatbot Advances of Pipeline Model Parallelism for Deep Learning Training: An Overview Age-of-Information-Aware Federated Learning
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