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Multimodal Sequential Modeling and Recognition of Human Activities

机译:多峰序列建模与人类活动的识别

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Video-based recognition of activities of daily living (ADLs) is being used in ambient assisted living systems in order to support independent living of old people. In this work, we propose a new multimodal ADL recognition method by modeling the correlation between motion and object information. We encode motion using dense interest point trajectories which are robust to occlusion and speed variability. We formulate the learning problem using a two-layer SVM hidden conditional random field (HCRF) recognition model that is particularly relevant for multimodal sequence recognition. This hierarchical classifier optimally combines the discriminative power of SVM and the long-range feature dependencies modeling by the HCRF.
机译:基于视频的识别日常生活(ADLS)的识别正在环境辅助生活系统中使用,以支持独立生活的老年人。在这项工作中,我们通过建模动作和对象信息之间的相关性建立新的多模态ADL识别方法。我们使用密集的兴趣点轨迹编码运动,这是鲁棒到遮挡和速度变化的。我们使用与多模式序列识别特别相关的双层SVM隐藏条件随机字段(HCRF)识别模型制定学习问题。该分层分类器最佳地结合了SVM的辨别力和由HCRF建模的长距离特征依赖性。

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