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Pattern Recognition in Multiband Imagery Using Stochastic Expectation Maximization

机译:使用随机期望最大化的多频带图像中的模式识别

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Hyperspectral sensors can facilitate automatic pattern recognition in cluttered imagery since man made objects often differ considerably from the natural background in absorbing and reflecting the radiation at various wavelengths i.e., the identification of the objects is based on spectral signature of the objects in the scene. In this paper, a unified approach for pattern recognition with known object signature is formulated by generating Gaussian mixture model to effectively utilize the underlying statistics of the data cube. To estimate the model parameters, enhanced version of the stochastic expectation maximization (SEM) algorithm is employed, which is also used successfully for image classification by reducing the unwanted information in the data cube. In the proposed scheme, at first we used the modified SEM to identify the different classes in the scene including the desired object class. Then, the Mahalanobis distance between the desired object signature and distributions of the mixture model is employed to detect the object class. Finally, the maximum a posteriori (MAP) probability for each pixel is estimated and Bayesian decision law is applied in order to isolate object pixels. The proposed algorithm has been tested using real life hyperspectral imagery and the results show that the algorithm shows robust performance in noisy environment.
机译:高光谱传感器可以促进杂乱图像中的自动图案识别,因为人造物体通常从吸收和反射各种波长的辐射的自然背景中的显着不同,因此,对象的识别是基于场景中对象的光谱特征。在本文中,通过生成高斯混合模型来制定具有已知对象签名的模式识别的统一方法,以有效地利用数据多维数据集的基础统计数据。为了估计模型参数,采用增强版的随机期望最大化(SEM)算法,这也通过减少数据多维数据集中的不需要的信息来成功用于图像分类。在所提出的方案中,首先我们使用了修改的SEM来识别包括所需对象类的场景中的不同类别。然后,采用混合模型的所需对象签名和分布之间的Mahalanobis距离来检测对象类。最后,估计每个像素的最大后验(MAP)概率,并且应用贝叶斯决策法以隔离对象像素。已经使用真实寿命高光谱图像测试了所提出的算法,结果表明该算法在嘈杂的环境中显示了鲁棒性能。

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