多模态框架下的线性视频预测模型学习及其异常检测

Giulia Slavic, Abrham Shiferaw Alemaw, L. Marcenaro, C. Regazzoni
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引用次数: 4

摘要

提出了一种基于动态贝叶斯网络(DBNs)的多模态框架下对视频数据进行未来帧预测和异常检测的方法。特别地,将里程计数据和来自移动车辆的视频数据融合在一起。在里程计数据上学习了马尔可夫跳变粒子滤波(MJPF),并利用其特征帮助学习视频数据上的卡尔曼变分自编码器(KVAE)。因此,可以使用学习到的模型对视频数据进行异常检测。我们使用在封闭环境中执行不同任务的车辆的多模态数据来评估所提出的方法。
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Learning Of Linear Video Prediction Models In A Multi-Modal Framework For Anomaly Detection
This paper proposes a method for performing future-frame prediction and anomaly detection on video data in a multi-modal framework based on Dynamic Bayesian Networks (DBNs). In particular, odometry data and video data from a moving vehicle are fused. A Markov Jump Particle Filter (MJPF) is learned on odometry data, and its features are used to aid the learning of a Kalman Variational Autoencoder (KVAE) on video data. Consequently, anomaly detection can be performed on video data using the learned model. We evaluate the proposed method using multi-modal data from a vehicle performing different tasks in a closed environment.
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