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Compressive sensing based flame detection in infrared videos Kizilötesi videolarda sikiştirmali algilama ile alev tespiti

机译:红外视频中基于压缩感测的火焰检测红外视频中的火焰检测与压缩检测

摘要

In this paper, a Compressive Sensing based feature extraction algorithm is proposed for flame detection using infrared cameras. First, bright and moving regions in videos are detected. Then the videos are divided into spatio-temporal blocks and spatial and temporal feature vectors are exctracted from these blocks. Compressive Sensing is used to exctract spatial feature vectors. Compressed measurements are obtained by multiplying the pixels in the block with the sensing matrix. A new method is also developed to generate the sensing matrix. A random vector generated according to standard Gaussian distribution is passed through a wavelet transform and the resulting matrix is used as the sensing matrix. Temporal features are obtained from the vector that is formed from the difference of mean intensity values of the frames in two neighboring blocks. Spatial feature vectors are classified using Adaboost. Temporal feature vectors are classified using hidden Markov models. To reduce the computational cost only moving and bright regions are classified and classification is performed at specified intervals instead of every frame. © 2013 IEEE.
机译:本文提出了一种基于压缩感知的特征提取算法,用于红外相机的火焰检测。首先,检测视频中的明亮区域和移动区域。然后将视频划分为时空块,并从这些块中提取空间和时间特征向量。压缩感测用于提取空间特征向量。通过将块中的像素与感测矩阵相乘来获得压缩的测量值。还开发了一种新方法来生成感测矩阵。根据标准高斯分布生成的随机向量将经过小波变换,并将所得矩阵用作传感矩阵。从向量获得时间特征,该向量由两个相邻块中帧的平均强度值之差形成。使用Adaboost对空间特征向量进行分类。使用隐马尔可夫模型对时间特征向量进行分类。为了减少计算成本,仅对运动区域和明亮区域进行分类,并以指定的间隔而不是每帧进行分类。 ©2013 IEEE。

著录项

  • 作者

    Günay O.; Enis Çetin A.;

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  • 年度 2013
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  • 正文语种 tur
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