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Application of morphological associative memories and Fourier descriptors for classification of noisy subsurface signatures

机译:形态关联记忆与傅里叶描述符的应用嘈杂的地下签名分类

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This paper presents a method for recognition of Noisy Subsurface Images using Morphological Associative Memories (MAM). MAM are type of associative memories that use a new kind of neural networks based in the algebra system known as semi-ring. The operations performed in this algebraic system are highly nonlinear providing additional strength when compared to other transformations. Morphological associative memories are a new kind of neural networks that provide a robust performance with noisy inputs. Two representations of morphological associative memories are used called M and W matrices. M associative memory provides a robust association with input patterns corrupted by dilative random noise, while the W associative matrix performs a robust recognition in patterns corrupted with erosive random noise. The robust performance of MAM is used in combination of the Fourier descriptors for the recognition of underground objects in Ground Penetrating Radar (GPR) images. Multiple 2-D GPR images of a site are made available by NASA-SSC center. The buried objects in these images appear in the form of hyperbolas which are the results of radar backscatter from the artifacts or objects. The Fourier descriptors of the prototype hyperbola-like and shapes from non-hyperbola shapes in the sub-surface images are used to make these shapes scale-, shift-, and rotation-invariant. Typical hyperbola-like and non-hyperbola shapes are used to calculate the morphological associative memories. The trained MAMs are used to process other noisy images to detect the presence of these underground objects. The outputs from the MAM using the noisy patterns may be equal to the training prototypes, providing a positive identification of the artifacts. The results are images with recognized hyperbolas which indicate the presence of buried artifacts. A model using MATLAB has been developed and results are presented.
机译:本文介绍了一种使用形态联想记忆(MAM)识别噪声地下图像的方法。 MAM是使用基于已知半环的代数系统的新型神经网络的关联存储类型。与其他转换相比,在该代数系统中执行的操作是高度非线性,提供额外的强度。形态学联想记忆是一种新的神经网络,提供具有嘈杂输入的强大性能。使用称为M和W矩阵的两个形态联想存储器的表示。 M关联存储器提供与膨胀随机噪声损坏的输入模式的强大关联,而W关联矩阵在用腐蚀随机噪声损坏的模式下执行鲁棒识别。 MAM的鲁棒性能与傅立叶描述符的组合使用,用于识别地面穿透雷达(GPR)图像中的地下物体。 NASA-SSC中心提供了网站的多个2-D GPR图像。这些图像中的埋地对象以双曲线的形式出现,这些形式是来自伪像或物体的雷达反向散射的结果。在子表面图像中的非双曲线形状的原型双曲线和形状的傅立叶描述符用于使这些形状鳞片,偏移和旋转不变。典型的双曲线和非双曲线形状用于计算形态学联想存储器。训练有素的MAM用于处理其他嘈杂的图像以检测这些地下物体的存在。使用噪声模式的MAM的输出可以等于训练原型,提供伪影的肯定识别。结果是具有识别的双曲线的图像,表明存在埋地的伪影。已经开发了使用MATLAB的模型并提出了结果。

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