Early stroke behavior detection based on improved video masked autoencoders for potential patients

IF 5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Complex & Intelligent Systems Pub Date : 2024-11-13 DOI:10.1007/s40747-024-01610-0
Meng Wang, Guanci Yang, Kexin Luo, Yang Li, Ling He
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Abstract

Stroke is the prevalent cerebrovascular disease characterized by significant incidence and disability rates. To enhance the early perceive and detection of potential stroke patients, the early stroke behavior detection based on improved Video Masked Autoencoders (VideoMAE) for potential patients (EPBR-PS) is proposed. The proposed method begins with novel time interval-based sampling strategy, capturing video frame sequences enriched with sparse motion features. On the basis of establishing the masking mechanism for adjacent frames and pixel blocks within these sequences, The EPBR-PS employes pipeline mask strategy to extract spatiotemporal features effectively. Then, the local convolution attention mechanism is designed to capture local dynamic feature information, and central to the EPBR-PS is the integration of local convolutional attention mechanism with VideoMAE's multi-head attention mechanism. This integration facilitates the simultaneous leveraging of global high-level semantics and local dynamic feature information. Dual attention mechanism-based method for the fusion of these global and local features is proposed. After that, the optimal parameters of EPBR-PS were determined through the experiment of learning rate and fusion weights of different features. On the NTU-ST dataset, comparative analysis with eight models demonstrated the superiority of EPBR-PS, evidenced by the average recognition accuracy of 89.61%, surpassing that 1.67% over the benchmark VideoMAE. On the HMDB51 dataset, EPBR-PS has Top1 of 71.31%, which is 0.73% higher than that of the VideoMAE, providing the viable behavior detection for perception early signs of potential stroke in the home environment. This code is available at https://github.com/wang-325/EPBR-PS/.

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基于改进的视频屏蔽自动编码器对潜在患者进行早期中风行为检测
脑卒中是一种常见的脑血管疾病,发病率和致残率都很高。为了加强对潜在脑卒中患者的早期感知和检测,提出了基于改进的视频屏蔽自动编码器(VideoMAE)的潜在患者早期脑卒中行为检测(EPBR-PS)。该方法首先采用新颖的基于时间间隔的采样策略,捕捉富含稀疏运动特征的视频帧序列。在对这些序列中的相邻帧和像素块建立掩码机制的基础上,EPBR-PS 采用管道掩码策略来有效提取时空特征。EPBR-PS 的核心是将局部卷积注意力机制与 VideoMAE 的多头注意力机制相结合。这种整合有助于同时利用全局高级语义和局部动态特征信息。本文提出了基于双重注意力机制的方法,用于融合这些全局和局部特征。随后,通过对不同特征的学习率和融合权重进行实验,确定了 EPBR-PS 的最佳参数。在 NTU-ST 数据集上,EPBR-PS 与八个模型的对比分析表明了其优越性,平均识别准确率达到 89.61%,比基准模型 VideoMAE 高出 1.67%。在 HMDB51 数据集上,EPBR-PS 的 Top1 为 71.31%,比 VideoMAE 高出 0.73%,为感知家庭环境中潜在中风的早期迹象提供了可行的行为检测。该代码可在 https://github.com/wang-325/EPBR-PS/ 上查阅。
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来源期刊
Complex & Intelligent Systems
Complex & Intelligent Systems COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-
CiteScore
9.60
自引率
10.30%
发文量
297
期刊介绍: Complex & Intelligent Systems aims to provide a forum for presenting and discussing novel approaches, tools and techniques meant for attaining a cross-fertilization between the broad fields of complex systems, computational simulation, and intelligent analytics and visualization. The transdisciplinary research that the journal focuses on will expand the boundaries of our understanding by investigating the principles and processes that underlie many of the most profound problems facing society today.
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