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Detection and recognition of indoor smoking events

机译:检测和识别室内吸烟事件

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Smoking in public indoor spaces has become prohibited in many countries since it not only affects the health of the people around you, but also increases the risk of fire outbreaks. This paper proposes a novel scheme to automatically detect and recognize smoking events by using exsiting surveillance cameras. The main idea of our proposed method is to detect human smoking events by recognizing their actions. In this scheme, the human pose estimation is introduced to analyze human actions from their poses. The human pose estimation method segments head and both hands from human body parts by using a skin color detection method. However, the skin color methods may fail in insufficient light conditions. Therefore, the lighting compensation is applied to help the skin color detection method become more accurate. Due to the human body parts may be covered by shadows, which may cause the human pose estimation to fail, the Kalman filter is applied to track the missed body parts. After that, we evaluate the probability features of hands approaching the head. The support vector machine (SVM) is applied to learn and recognize the smoking events by the probability features. To analysis the performance of proposed method, the datasets established in the survillance camera view under indoor enviroment are tested. The experimental results show the effectiveness of our proposed method with accuracy rate of 83.33%.
机译:在许多国家/地区,在公共室内吸烟已被禁止,因为它不仅影响您周围人们的健康,而且还增加了发生火灾的风险。本文提出了一种新颖的方案,可以使用现有的监控摄像头自动检测和识别吸烟事件。我们提出的方法的主要思想是通过识别人类的吸烟行为来检测他们的行为。在该方案中,引入了人体姿势估计,以根据人体姿势分析其动作。人体姿势估计方法通过使用皮肤颜色检测方法将头部和双手从人体部位中分割出来。但是,在光线不足的情况下,肤色方法可能会失败。因此,应用照明补偿以帮助皮肤颜色检测方法变得更准确。由于人体部位可能被阴影覆盖,这可能导致人体姿势估计失败,因此应用了卡尔曼滤波器来跟踪丢失的人体部位。之后,我们评估手接近头部的概率特征。支持向量机(SVM)用于通过概率特征学习和识别吸烟事件。为了分析所提出方法的性能,测试了在室内环境下在Survirlance摄像机视图中建立的数据集。实验结果证明了该方法的有效性,准确率达83.33%。

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