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Multisensor object segmentation using a neural network

机译:使用神经网络的多传感器对象分割

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摘要

A neural network architecture is presented to segment objects using multiple sensor/feature images. The neural architecture consists of a region growing net to separate an object from the surrounding background based upon local statistical properties. The region growing net consists of a lattice of neural processing elements for propagating a similarity activity between image pixels. A potential function approach is presented to define the neural weights by measuring pixel similarity in multisensor/feature images. The performance of the neural segmenter is demonstrated by comparing its performance to that of an architecture using a statistical decision theoretic technique.
机译:使用多个传感器/特征图像向神经网络架构呈现给段对象。神经结构包括一个地区,该区域基于局部统计特性将来自周围背景的对象分离。该区域生长净包括用于在图像像素之间传播相似性活动的神经处理元件的格子。提出了潜在的功能方法来通过测量多传感器/特征图像中的像素相似度来定义神经重量。通过使用统计决策理论技术将其性能与架构的性能进行比较来证明神经分段器的性能。

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