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Hybrid architecture for KIMS object recognition in a multicontext scene

机译:用于Kims对象识别的混合架构在多附录场景中

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In a multicontext scene where several objects may be occluded or scenes may change rapidly, a single paradigm for computer vision may not be sufficient. The demand to adjust and learn new environment is therefore a challenging modeling problem in computer vision research. In response to this challenge we have developed a hybrid architecture which combines classical pattern recognition algorithms with fuzzy knowledge-base and Hopfield Neural Network. We also present elementary results obtained from this effort.
机译:在多附录场景中,其中几个对象可以被遮挡或场景可以快速改变,计算机视觉的单个范例可能是不够的。因此,需要调整和学习新环境是计算机视觉研究中的一个具有挑战性的建模问题。为了响应这一挑战,我们开发了一种混合架构,它将经典模式识别算法与模糊知识库和Hopfield神经网络结合起来。我们还提出了从这项工作中获得的基本结果。

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