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Neural Network Model Restoring Partly Occluded Patterns

机译:神经网络模型恢复部分遮挡模式

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摘要

Even the identical image is perceived differently by human beings depending on the shape of occluding objects. This paper proposes a neural network model that has an ability to recognize and restore partly occluded patterns in a similar way as our perception. It is a multi-layered hierarchical neural network, in which visual information is processed by interaction of bottom-up and top-down signals. Occluded parts of a pattern are restored mainly by feedback signals from the highest stage of the network, while the unoccluded parts are reproduced mainly by signals from lower stages. The model does not use a simple template matching method. It can recognize and restore even deformed versions of learned patterns.
机译:即使是相同的图像,人类也会根据遮挡物的形状而不同地感知。本文提出了一种神经网络模型,该模型能够以与我们的感知相似的方式识别和恢复部分被遮挡的模式。它是一个多层的层次神经网络,其中视觉信息通过自下而上和自上而下的信号交互进行处理。模式的遮挡部分主要由来自网络最高层的反馈信号恢复,而未遮挡的部分主要由较低级的信号再现。该模型不使用简单的模板匹配方法。它甚至可以识别和恢复学习模式的变形版本。

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