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Moving Objects Detection and Tracking in Infrared or Thermal Image

机译:红外或热图像中的运动对象检测和跟踪

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Moving objects detection and tracking in infrared images is an important goal in most of the practical applications of the thermo vision systems. For these thermo vision applications here is proposed to apply a cost function associated with the minimization of a global criterion for simultaneous estimation of the optical flow and detection of the moving objects in infrared images. The optical flow and moving objects detection and tracking in infrared images are modeled with an appropriate neural network. The thermo vision or infrared images, captured from thermo camera, are first partitioned in rectangular blocks. The blocks are described with a number of parameters placed in the corresponding feature vectors. It is proposed to apply as parameters of the blocks the following important in thermal images characteristics: the position, the gray level and the local motion information. It is chosen the classification of the feature vectors by considering the displaced frame difference, according to Bayesian theory of decision criterion and representing a metric in the parameter space.
机译:在红外视觉图像的大多数实际应用中,红外图像中的运动对象检测和跟踪是一个重要目标。对于这些热视觉应用,在此建议应用与全局准则最小化相关的成本函数,以同时估计光流并检测红外图像中的运动物体。使用适当的神经网络对红外图像中的光流和移动物体进行检测和跟踪。从热像仪捕获的热视觉或红外图像首先被划分为矩形块。使用放置在相应特征向量中的许多参数来描述这些块。建议在热图像特性中应用以下重要参数作为块的参数:位置,灰度和局部运动信息。根据决策准则的贝叶斯理论并在参数空间中表示一个度量,通过考虑位移的帧差异来选择特征向量的分类。

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