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The mind's eye: reconstructing noise corrupted objects, extracting secondary structure and figure ground separation

机译:心灵:重建受噪音破坏的物体,提取二级结构并进行地面分离

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The SLME network is a massively parallel recurrent, iterative, multiple constraint satisfaction neural network. It is capable of learning to solve problems including segmentation and vision tasks. It develops its own knowledge and feature set during iterative training. It consists of a retina of cells that learn their behavior and function during training. The cells are local processors that achieve consistency in an iterative manner using knowledge gained through learning, combined with vertical and horizontal communication of state between cells of neighboring regions. The SLME network can be used to extract structure from gray scale images of a naturally variable population for which it has been trained. Examples included are reconstruction and extraction of basic primary and secondary structure of noise corrupted objects and patterns, filling in objects, figure ground separation, and extraction of center axes of noise corrupted blobs.
机译:SLME网络是大规模并行的递归,迭代,多约束满足神经网络。它具有学习解决包括分割和视觉任务在内的问题的能力。它在迭代训练中发展自己的知识和功能集。它由在训练期间学习其行为和功能的细胞视网膜组成。单元是本地处理器,它们使用通过学习获得的知识,与相邻区域的单元之间的状态的垂直和水平通信相结合,以迭代的方式实现一致性。 SLME网络可用于从经过训练的自然可变种群的灰度图像中提取结构。实例包括噪声破坏对象和图案的基本主要和辅助结构的重建和提取,对象的填充,图形地面分离以及噪声破坏对象的中心轴的提取。

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